U.S. patent number RE40,767 [Application Number 09/708,713] was granted by the patent office on 2009-06-23 for unmanned integrated optical remote emissions sensor (res) for motor vehicles.
This patent grant is currently assigned to Environmental Systems Products Holdings Inc.. Invention is credited to Troy P. Bahan, Michael D. Jack, David R Nelson, Jay Peterson, George C. Polchin.
United States Patent |
RE40,767 |
Peterson , et al. |
June 23, 2009 |
Unmanned integrated optical remote emissions sensor (RES) for motor
vehicles
Abstract
An unmanned integrated RES 12 integrates all of its components
except the reflector 22 into a single console 30 that is positioned
at the side of a road and has a CPU 36 that controls calibration,
verification and data gathering. The RES's source 32 and receiver
34 are preferably stacked one on top of the other such that the IR
beam 24 traverses a low and high path as it crosses the road 14.
This allows the RES to detect both low and high ground clearance
vehicles. To maintain the vehicle processing and identification
throughput, the speed sensor 54 and ALPR 48,50 detect the passing
vehicles at steep angles, approximately 20 to 35 degrees. In a
preferred system, a manned control center 16 communicates with a
large number of the unmanned integrated RES to download emissions
data, perform remote diagnostics, and, if necessary, dispatch a
technician to perform maintenance on a particular RES.
Inventors: |
Peterson; Jay (Montecito,
CA), Nelson; David R (Santa Barbara, CA), Bahan; Troy
P. (Santa Barbara, CA), Polchin; George C. (Santa
Barbara, CA), Jack; Michael D. (Goleta, CA) |
Assignee: |
Environmental Systems Products
Holdings Inc. (East Granby, CT)
|
Family
ID: |
24972540 |
Appl.
No.: |
09/708,713 |
Filed: |
November 9, 2000 |
Related U.S. Patent Documents
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Application
Number |
Filing Date |
Patent Number |
Issue Date |
|
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09521858 |
Mar 9, 2000 |
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Reissue of: |
08739487 |
Oct 26, 1996 |
05726450 |
Mar 10, 1998 |
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Current U.S.
Class: |
250/338.5;
250/252.1; 250/339.13; 356/436 |
Current CPC
Class: |
G01N
21/3504 (20130101) |
Current International
Class: |
G01N
21/35 (20060101) |
Field of
Search: |
;250/338.5,339.07,339.09,339.12,339.13,341.5,343,252.1 |
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|
Primary Examiner: Porta; David P.
Assistant Examiner: Taningco; Marcus H
Attorney, Agent or Firm: Pillsbury Winthrop Shaw Pittman
LLP
Parent Case Text
.Iadd.CROSS-REFERENCE TO .Iaddend.
RELATED .[.APPLICATION.]. .Iadd.APPLICATIONS.Iaddend.
.[.This application is related to application Ser. No. 08/318,566,
entitled "Optical Sensing Apparatus for Remotely Measuring Exhaust
Gas Composition of Moving Motor Vehicles" filed Oct. 5, 1994 and
assigned to Santa Barbara Research Corporation, the assignee of the
present invention..]. .Iadd.This application is a continuation of
U.S. patent application Ser. No. 09/521,858, filed Mar. 9, 2000
(now abandoned), which is a Reissue of U.S. patent application Ser.
No. 08/739,487, filed Oct. 26, 1996(which issued as U.S. Pat. No.
5,726,450 on Mar. 10, 1998). Additionally, this application is
related to U.S. patent application Ser. No. 08/318,566, filed Oct.
5, 1994, entitled "Optical Sensing Apparatus for Remotely Measuring
Exhaust Gas Composition of Moving Motor Vehicles" (now U.S. Pat.
No. 5,591,975, ussued Jan. 7, 1997)..Iaddend.
Claims
We claim:
1. An .[.unmanned optical.]. emissions sensor for sensing a gas
mixture composition of an exhaust plume of a motor vehicle
.[.travelling along a road.]. , comprising: a source for radiating
a beam of .[.light.]. .Iadd.radiation .Iaddend.along a path
.[.across a road.]. such that the beam passes through the exhaust
plume of a passing vehicle and otherwise passes through ambient
air; a receiver for sampling radiation levels at a plurality of
predetermined wavelengths from the beam; a canister for emitting a
puff of calibration gas in the path of the beam between the source
and the receiver, said calibration gas having a known reference
composition .Iadd.of gas which absorbs radiation .Iaddend.at the
predetermined wavelengths; a data processing computer for computing
a gas mixture composition from the .[.sensed.]. .Iadd.sampled
.Iaddend.radiation levels in accordance with stored calibration
curves; a trigger device that produces a trigger signal when a
vehicle passes through the beam causing the data processing
computer to record the gas mixture composition of the vehicle's
exhaust plume for a period of time; an automated control computer
that a) calibrates the data processing computer by directing the
canister to emit a puff of calibration gas, whereby the data
processing computer .[.recomputes.]. .Iadd.computes .Iaddend.the
calibration curves in accordance with the known reference
composition; b) verifies the calibration by directing the canister
to emit a puff of calibration gas, whereby the data processing
computer computes a test composition from the radiation levels and
accepts the calibration when the test composition is close enough
to the known reference composition and otherwise rejects the
calibration and initiates .[.recalibration.]. .Iadd.a new
calibration.Iaddend.; and c) monitors the gas mixture composition
of the ambient air to control .[.recalibration.]. .Iadd.calibration
.Iaddend.of the data processing computer; and a vehicle
identification device that responds to the trigger signal by
recording a vehicle identification for the passing vehicle.
2. The .[.unmanned optical.]. emissions sensor of claim 1, further
comprising: a multi-position lens cover on the receiver, said
automated control computer indexing the position of the lens cover
when the gas mixture composition of the ambient air deviates from
an ambient reference level by more than a specified threshold and
initiates .[.recalibration.]. .Iadd.a new calibration .Iaddend.if
the deviation remains greater than the specified threshold.
3. The .[.unmanned optical.]. emissions sensor of claim 1, wherein
the automated control computer monitors the gas mixture composition
of the vehicle's exhaust plume to control .[.reverification.].
.Iadd.verification .Iaddend.of the calibration .Iadd.and initiation
of a new calibration.Iaddend..
4. The .[.unmanned optical.]. emissions sensor of claim 1, wherein
the automated control computer monitors a time from the last
calibration and when the time exceeds a mandatory recalibration
period it initiates .[.another.]. .Iadd.a new
.Iaddend.calibration.
5. The .[.unmanned optical.]. emissions sensor of claim 1, wherein
the automated control computer monitors the data processing
computer and power cycles the emissions sensor when the data
processing computer fails to produce gas mixture compositions.
6. The .[.unmanned optical.]. emissions sensor of claim 1, further
comprising: a .[.manned.]. control center; and a communications
channel for communication between the automated control computer
and the .[.manned.]. control center, said automated control
computer responding to repeated calibration rejections by
transmitting a help message to the .[.manned.]. control center,
which in turn responds by performing diagnostics to determine a
cause for the calibration rejection and then either .[.remedy.].
.Iadd.remedies .Iaddend.the cause remotely or .[.dispatch.].
.Iadd.dispatches .Iaddend.a technician to remedy the cause on
site.
7. The .[.unmanned optical.]. emissions sensor of claim 1, further
comprising: a vehicle detector for sensing .[.an oncoming.].
.Iadd.a .Iaddend.vehicle and computing its acceleration, said data
processing computer disabling .[.the recordation.]. .Iadd.a
recording .Iaddend.of the .Iadd.gas mixture .Iaddend.composition of
the vehicle's exhaust plume when the acceleration exceeds a
threshold.
8. The .[.unmanned optical.]. emission sensor of claim 7, wherein
the vehicle detector .[.compute's.]. .Iadd.computes .Iaddend.the
vehicle's speed and computes the time-to-trigger range from the
vehicle's measured speed and acceleration, said data processing
computer disabling .[.the recordation.]. .Iadd.a recording
.Iaddend.of the .Iadd.gas mixture .Iaddend.composition of the
vehicle's exhaust plume when .[.triggering.]. .Iadd.the trigger
signal .Iaddend.occurs outside the time-to-trigger range.
9. The .[.unmanned optical.]. emissions sensor of claim 7, wherein
said source and said receiver are placed on the same side of
.[.the.]. .Iadd.a .Iaddend.road, further comprising: a reflector
that is positioned on the other side of the road such that the beam
emitted by the source reflects off of the reflector and back to the
receiver.
10. The .[.unmanned optical.]. emissions sensor of claim 9, further
comprising: a single console that .[.contains.]. .Iadd.comprises
.Iaddend.the source, the receiver, the canister, the data
processing computer, the automated control computer, the vehicle
identification device, and the vehicle detector.
11. The .[.unmanned optical.]. emissions sensor of claim 10,
wherein the vehicle identification device comprises an automated
license plate reader (ALPR) .[.that reads the vehicle's license at
an angle of at least 20 degrees and said vehicle detector senses
the oncoming vehicle at an angle of at least 20 degrees to maintain
a vehicle throughput.]. .
12. The .[.unmanned optical.]. emissions sensor of claim 10,
wherein one of said source and said receiver is positioned above
the other so that the beam traverses .[.the road in.]. a low path
in one direction and .[.in.]. a high path in the other direction so
that the trigger device will trigger on both high and low ground
clearance vehicles.
13. An .[.integrated optical.]. emissions sensor for sensing a gas
mixture composition of an exhaust plume of a motor vehicle
.[.travelling along a road.]. , comprising: a .[.single.]. console
that is positioned at one side of .[.the road.]. .Iadd.a detection
space.Iaddend.; a vehicle detector in said console for sensing
.[.an oncoming.]. .Iadd.a .Iaddend.vehicle and computing its
acceleration; a source in said console for radiating a beam of
light along a path .[.across the road.]. such that the beam passes
through the exhaust plume of .[.a passing.]. .Iadd.the
.Iaddend.vehicle and otherwise passes through ambient air; a
reflector that is positioned on the other side of the .[.road.].
.Iadd.detection space .Iaddend.such that the beam reflects off of
the reflector and back to the console; a receiver in said console
sampling radiation levels at a plurality of predetermined
wavelengths from the beam; a data processing computer in said
console for computing a gas mixture composition from the
.[.sensed.]. .Iadd.sampled .Iaddend.radiation levels in accordance
with stored calibration curves; a canister in said console for
emitting a puff of calibration gas in the path of the beam between
the source and the receiver to .[.recompute.]. .Iadd.compute
.Iaddend.the calibration curves; a trigger device in said console
that produces a trigger signal when .[.a.]. .Iadd.the
.Iaddend.vehicle passes through the beam causing the data
processing computer to record the gas mixture composition of the
vehicle's exhaust plume for a period of time.[., said data
processing computer disabling the recordation of the composition of
the vehicle's exhaust plume when the acceleration exceeds a
threshold.]. ; and a vehicle identification device in said console
that responds to the trigger signal by recording a vehicle
identification for the .[.passing.]. vehicle.
14. The .[.unmanned optical.]. emissions sensor of claim 13,
wherein the vehicle identification device comprises an automated
license plate reader (ALPR) .[.that reads the vehicle's license at
an angle of at least 20 degrees and said vehicle detector senses
the oncoming vehicle at an angle of at least 20 degrees to maintain
a vehicle throughput.]. .
15. The .[.unmanned optical.]. emissions sensor of claim 13,
wherein one of said source and said receiver is positioned above
the other so that the beam traverses the .[.road.]. .Iadd.detection
space .Iaddend.in a low path in one direction and in a high path in
the other direction .[.so that the trigger device will trigger on
both high and low ground clearance vehicles.]. .
16. The .[.unmanned optical.]. emissions sensor of claim 13,
wherein the vehicle detector .[.compute's.]. .Iadd.computes
.Iaddend.the vehicle's speed and computes a time-to-trigger range
from the vehicle's measured speed and acceleration, said data
processing computer disabling .[.the recordation.]. .Iadd.a
recording .Iaddend.of the .Iadd.gas mixture .Iaddend.composition of
the vehicle's exhaust plume when .[.triggering.]. .Iadd.the
triggering signal .Iaddend.occurs outside the time-to-trigger
range.
17. The .[.unmanned optical.]. emissions sensor of claim 13,
wherein said calibration gas has a known reference composition
.Iadd.of gas which absorbs radiation .Iaddend.at the predetermined
wavelengths, further comprising an automated control computer that
a) calibrates the data processing computer by directing the
canister to emit a puff of calibration gas, whereby the data
processing computer .[.recomputes.]. .Iadd.computes .Iaddend.the
calibration curves in accordance with the known reference
composition; b) verifies the calibration by directing the canister
to emit a puff of calibration gas, whereby the data processing
computer computes a test composition from the radiation levels and
accepts the calibration when the test composition is close enough
to the known reference composition and otherwise rejects the
calibration and initiates .[.recalibration.]. .Iadd.a new
calibration.Iaddend.; and c) monitors the gas mixture composition
of the ambient air to control .[.recalibration.]. .Iadd.calibration
.Iaddend.of the data processing computer.
18. A remote emissions sensing system sensing gas mixture
compositions of exhaust plumes for motor vehicles traveling along a
network of roads, comprising: a plurality of .[.unmanned integrated
optical.]. emissions sensors positioned at different places in the
network on a side of the road, each emissions sensor comprising: a
console; a vehicle detector in said console for sensing .[.an
oncoming.]. .Iadd.a .Iaddend.vehicle and computing its
acceleration; a source in said console for radiating a beam of
light along a path across the road such that the beam passes
through the exhaust plume of .[.a passing.]. .Iadd.the
.Iaddend.vehicle and otherwise passes through ambient air; a
reflector that is positioned on the other side of the road such
that the beam reflects off of the reflector and back to the
console; a receiver in said console that samples radiation levels
at a plurality of predetermined wavelengths from the beam; a data
processing computer in said console for computing a gas mixture
composition from the .[.sensed.]. .Iadd.sampled .Iaddend.radiation
levels in accordance with stored calibration curves; a canister in
said console for emitting a puff of calibration gas in the path of
the beam between the source and the receiver, said calibration gas
having a known reference composition .Iadd.of gas which absorbs
radiation .Iaddend.at the predetermined wavelengths; a trigger
device in said console that produces a trigger signal when .[.a.].
.Iadd.the .Iaddend.vehicle passes through the beam causing the data
processing computer to record the gas mixture composition of the
vehicle's exhaust plume for a period of time.[., said data
processing computer invalidating the recordation of the composition
of the vehicle's exhaust plume when the acceleration exceeds a
threshold.]. ; an automated control computer that a) calibrates the
data processing computer by directing the canister to emit a puff
of calibration gas, whereby the data processing computer
.[.recomputes.]. .Iadd.computes .Iaddend.the calibration curves in
accordance with the known reference composition; b) verifies the
calibration by directing the canister to emit a puff of calibration
gas, whereby the data processing computer computes a test
composition from the radiation levels and accepts the calibration
when the test composition is close enough to the known reference
composition and otherwise rejects the calibration and initiates
.[.recalibration.]. .Iadd.a new calibration.Iaddend.; and c)
monitors the gas mixture composition of the ambient air to control
.[.recalibration.]. .Iadd.calibration .Iaddend.of the data
processing computer; and a vehicle identification device in said
console that responds to the trigger signal by recording a vehicle
identification for the .[.passing.]. vehicle; a .[.manned.].
control center; and a communications channel for communication
between the emissions sensors and the .[.manned.]. control center,
said emissions sensors responding to repeated calibration
rejections by transmitting a help message to the .[.manned.].
control center, which in turn responds by performing diagnostics to
determine a cause for the calibration rejection and then either
.[.remedy.]. .Iadd.remedies .Iaddend.the cause remotely or
.[.dispatch.]. .Iadd.dispatches .Iaddend.a technician to remedy the
cause on site.
19. The .[.unmanned optical emissions sensor.]. .Iadd.system
.Iaddend.of claim 18, wherein the vehicle detector .[.compute's.].
.Iadd.of the emissions sensors computes .Iaddend.the vehicle's
speed and computes a time-to-trigger range from the vehicle's
measured speed and acceleration, said data processing computer
disabling .[.the recordation.]. .Iadd.a recording .Iaddend.of the
.Iadd.gas mixture .Iaddend.composition of the vehicle's exhaust
plume when .[.triggering.]. .Iadd.the trigger signal
.Iaddend.occurs outside the time-to-trigger range.
20. The .[.unmanned optical emissions sensor.]. .Iadd.system
.Iaddend.of claim 18, wherein the vehicle identification device
.Iadd.of the emissions sensors .Iaddend.comprises an automated
license plate reader (ALPR) .[.that reads the vehicle's license at
an angle of at least 20 degrees and said vehicle detector senses
the oncoming vehicle at an angle of at least 20 degrees to maintain
a vehicle throughput.]. .
21. The .[.unmanned optical emissions sensor.]. .Iadd.system
.Iaddend.of claim 18, wherein one of said source and said receiver
.Iadd.of said emission sensors .Iaddend.is positioned above the
other so that the beam traverses the road in a low path in one
direction and in a high path in the other direction .[.so that the
trigger device will trigger on both high and low ground clearance
vehicles.]. .
Description
BACKGROUND OF THE INVENTION
1. Field of the Invention
This invention relates to the monitoring of environmental
pollution, and more specifically to an unmanned integrated RES for
remotely monitoring the exhaust gas composition of moving motor
vehicles.
2. Description of the Related Art
Environmental pollution is a serious problem which is especially
acute in urban areas. A major cause of this pollution is exhaust
emissions from automotive vehicles. Official standards have been
set for regulating the allowable amounts of pollutants species in
automobile exhausts, and in some areas, periodic inspections or
"smog checks" are required to ensure that vehicles meet these
standards.
Anti-pollution devices which are required equipment on newer
vehicles accomplish their intended purpose of reducing pollution in
the vehicle exhaust to within prescribed levels. However, some
older vehicles and special types of vehicles are exempt from
inspections. Furthermore, some vehicle owners with mechanical
expertise can perform whatever servicing is necessary to place
their vehicles in condition to pass required inspections, and
subsequently remove anti-pollution devices and/or return the
vehicles with an attendant increase in pollutant emissions for
normal use. The relatively small number of noncomplying vehicles
generate a disproportionately large amount of pollution.
As a result, an anti-pollution program which depends entirely on
mandatory periodic inspections performed at fixed facilities is
inadequate. It is necessary to identify vehicles which are actually
operating in violation of prescribed emission standards, and either
require them to be placed in conformance with the standards or be
removed from operation.
Manned RESs are now used to augment the periodic inspection program
to identify vehicles that are in violation of the emission
standards. In general, RES are a nonobtrusive and cost-effective
means for identifying the high pollution emitting vehicles and
notifying the owner to take corrective action in a timely manner.
The Smog Dog.TM. RES produced by Santa Barbara Research Center, the
assignee of the present invention, includes a source and a receiver
that are mounted on respective tripods and positioned on opposite
sides of a road, a video camera and speed sensor that are mounted
on a tripod that is positioned about 50 feet up the road in the
direction of oncoming traffic, a van that contains a computer, data
storage, power sources, calibration gas, and a video monitor, and a
technician.
The source projects an IR beam across the road to the receiver
which continuously senses pollutant levels such as carbon monoxide
(CO), carbon dioxide (CO.sub.2), hydrocarbons (HC), water
(H.sub.2O), nitric oxide (NO.sub.x) in the received IR beam. When a
vehicle passes through the IR beam, a sensor triggers the receiver
to write the pollutant levels for the vehicle's exhaust plume to a
data file in the data storage. The beam is set at a height to
detect either low profile vehicles (cars) or high profile vehicles
(trucks), but not both. The video camera takes a picture of the
passing vehicle and the computer executes a character recognition
program to identify the plate, which is then appended to the data
file. If the speed sensor determines that the vehicle's
acceleration and/or speed exceed certain levels, indicating that
the vehicle's emissions control equipment are disabled, the
recorded data is invalidated.
One drawback of the SMOG Dog.TM. and the other known RES systems is
that the components, i.e. the sensor, receiver, video camera/speed
sensor, and the van, are discrete parts that are positioned over a
relatively large area. The source and receiver are positioned on
opposite sides of the road. For safety purposes, they must be set
back from the edges of the road. The video camera/speed sensor are
positioned up the road such that their detection angles with
respect to the passing vehicles is sufficiently shallow,
approximately 3 degrees, to provide an accurate acceleration
estimate and a high confidence of plate recognition. This can cause
mismatch errors between the emissions readings and the plate
recognition. Also, there must be enough room to park the van. These
spatial requirements limit the applicability of the known RES
systems. Furthermore, the discrete components are expensive because
they require their own tripod, power supply, and alignment
mechanisms.
Another drawback is that the known RES must be continuously manned
by a technician, which is very expensive. After initial set up and
alignment, the technician monitors the equipment to protect it from
vandalism, performs required maintenance, and puts the system away
at the end of the day. For example, the components may fall out of
alignment due to the vibrations caused by passing vehicles, the
various lenses may become occluded or the calibration gas may run
out. Furthermore, the technician controls the data gathering
process. The technician periodically places the RES in calibration
mode, puffs a calibration gas into the IR beam to calibrate the
system and evaluates the results displayed on the video monitor to
accept or reject the calibration. Thereafter, the technician places
the RES in data gathering mode, puffs the calibration gas, and
compares the computed pollutant levels to the known levels of the
calibration gas to accept or reject the verification of the
calibration. During data gathering, the technician monitors both
the signal levels of the exhaust plumes and the ambient air to
determine whether the system has gone out of calibration or has a
mechanical error. The technician also verifies the results of the
plate recognition system.
U.S. Pat. No. 5,418,366 "IR-Based Nitric Oxide Sensor Having Water
Vapor Compensation" issued May 23, 1995 discloses a specific
receiver configuration having three channels for measuring a NO
transmission, a water transmission, and a reference transmission,
respectively, that are combined to give the effective NO
transmission value. U.S. Pat. No. 5,210,702, "Apparatus for Remote
Analysis of Vehicle Emissions" issued May 11, 1993 discloses a
specific receiver configuration in which the ultraviolet beam is
separated from the IR beam to sense the NO levels, and the IR beam
is split into a plurality of components to measure CO, CO.sub.2, HC
and H.sub.2O. Both systems use discrete source and receiver
components placed on opposite sides of a road, a camera mounted on
a tripod up the road, and a van for housing the control
electronics, and require a technician to set the system up,
calibrate the system, control the data gathering process, and pack
it up at the end of the day.
In 1992 Remote Sensing Technologies (RST) experimented with a
double-pass RES system called the RSD1000 in which a van housing
both the source and the receiver and the video camera was suspended
from a 20 foot boom. The IR beam was reflected off a mirror on the
opposite side of the road back to the receiver. RST's system did
not include the plate recognition or speed sensing capabilities,
and never worked well enough for commercial exploitation. As a
result, RST developed a one-pass system with the source and
receiver on opposite sides of the road.
SUMMARY OF THE INVENTION
In view of the above problems, the present invention provides an
unmanned integrated RES that reduces cost and simplifies
operation.
This is accomplished by integrating each of the RES's components
except the reflector into a single console that is positioned at
the side of a road and providing a CPU that controls calibration,
verification and data gathering. The source and receiver are
preferably stacked one on top of the other such that the IR beam
traverses a low and high path as it crosses the road. This allows
the RES to detect both low and high ground clearance vehicles. To
maintain the vehicle processing and identification throughput, the
speed sensor and ALPR detect the passing vehicles at steep angles,
approximately 20 to 35 degrees. In a preferred system, a manned
control center communicates with a large number of the unmanned
integrated RES to download emissions data, perform remote
diagnostics, and, if necessary, dispatch a technician to perform
maintenance on a particular RES.
These and other features and advantages of the invention will be
apparent to those skilled in the art from the following detailed
description of preferred embodiments, taken together with the
accompanying drawings, in which:
BRIEF DESCRIPTION OF THE DRAWINGS
FIG. 1 is a diagram of an remote emissions sensing system in which
a plurality of unmanned integrated RESs record vehicle emissions
and communicate with a central unmanned control center;
FIG. 2 is a perspective view of one of the unmanned integrated RESs
shown in FIG. 1;
FIG. 3 is a diagram of the source shown in FIG. 2;
FIG. 4 is a diagram of the receiver shown in FIG. 2;
FIG. 5 is a block diagram of the automated control processes
executed by the control CPU shown in FIG. 2;
FIG. 6 is a flowchart illustrating the operation of the speed
sensor shown in FIG. 2;
FIG. 7 is a flowchart illustrating the operation of the automated
license plate reader (ALPR) shown in FIG. 2; and
FIG. 8 is a flowchart illustrating the coordination of the speed
sensor and the ALPR shown in FIG. 2.
DETAILED DESCRIPTION OF THE INVENTION
The present invention provides an emissions sensing system that
includes a plurality of unmanned integrated RES. A manned control
center communicates with a large number of the RESs to download
emissions data, perform remote diagnostics, and, if necessary,
dispatch a technician to perform maintenance on a particular RES.
The source, receiver, speed sensor, automated license plate reader
(ALPR), gas canister, power supplies, and computer are integrated
into a console that can be positioned at the side of a road either
permanently or for an extended period of time. A reflector is
positioned on the other side of the road to reflect the IR beam
back to the receiver. The source and receiver are preferably
stacked one on top of the other such that the IR beam traverses a
low and high path as it crosses the road. This allows the RES to
detect both low and high ground clearance vehicles. To maintain the
vehicle processing and identification throughput of the known
systems, the speed sensor and ALPR detect the passing vehicles at
steep angles, approximately 20 to 35 degrees. This has the
beneficial effect of reducing the number of mismatches between
pollutant readings and vehicle identification. Furthermore, data
gathering control including calibration, verification, and data
gathering are automated. This eliminates the need for an on site
technician, which further reduces cost.
As shown in FIG. 1, a remote emissions sensing system 10 includes a
plurality of unmanned integrated RESs 12 that are placed at
different positions in a network of roads 14, a manned control
center 16 and a two-way communications channel 18. The
communications channel shown is a wire-to-wire telephone network.
Alternately, a cellular or satellite network could be used.
The RES 12 and a reflector 22 are placed on opposite sides of the
road 14 and aligned such that the RES's IR beam 24 is reflected
back to the RES 12. When a vehicle 26 passes through the IR beam
24, the RES 12 writes the pollutant levels from the vehicle's
exhaust plume 28 to a data file and appends the vehicle's license
plate number. If the vehicle's speed or acceleration are too high,
indicating that the vehicle's emissions control have been disabled,
the data is invalidated.
The RESs 12 are automated to maintain calibration and, if repeated
recalibration fails, to notify the control center 16. The control
center performs remote diagnostics to identify the cause of the
calibration failure and, if possible, to correct the problem.
Otherwise a technician is dispatched to the RES 12. The RESs 12
periodically download the gathered emissions data to the control
center 16.
As shown in FIG. 2, all of the components of the RES 12, except for
the reflector 22, are enclosed in a console 30, suitably 5' high,
3' wide, and 2' deep. The reflector 22 such as a piece of black
aluminum that is opaque in the visible spectrum is attached to the
guard rail at the side of the road, for example. A source 32 emits
the IR beam 24 that crosses the road and reflects off of the
reflector 22 back to a receiver 34. The receiver 34 samples the
radiation levels in the beam 24 at various wavelengths. Because of
the presence of NO, water vapor, CO.sub.2, CO, HC and other
molecular species within the exhaust plume 28, the IR beam 24 is
partially absorbed at the various wavelengths when it passes
through the plume. A computer 36 includes a data processing central
processing unit (CPU) 38 that computes the composition of the
ambient air, and when a vehicle passes by, computes the composition
of the plume 28 in terms of the percentage or concentrations of the
constituents NO, CO.sub.2, CO and HC based on the sampled radiation
levels. The computation of the composition is well known in the art
and is thus omitted.
A trigger circuit 40 in the receiver 34 provides a trigger signal
when a vehicle passes through the beam 24. The circuit responds to
the sequential condition of the received signal going to zero,
"beam block" followed by the received signal returning to a valid
emissions level, "beam unblock." Placing the source 32 on top of
the receiver 34 causes the IR beam 24 to traverse an upper path 42
across the road and to return along a lower path 44 to the
receiver. As a result, the circuit will trigger on either low or
high ground clearance vehicles. The trigger signal is fed to the
data processing CPU 38 causing it to write the composition of the
plume to a data file on a hard disk 46.
A vehicle identification system identifies the passing vehicle and
appends the identification to the data file. The currently
preferred approach is an automated license plate reader (ALPR)
system that includes a video camera 48 that takes a picture of the
vehicle's license plate 50 in response to the trigger signal and a
identification CPU 52 that executes a character recognition
algorithm to extract the plate number. Alternately, the vehicles
could transmit identification codes that would be detected as the
vehicles pass by the RES.
The video camera takes the picture at an angle .rho. with respect
to the road. The shallower the angle, the easier it is for the
character recognition algorithm to extract the plate number.
However, the shallower the angle, the farther the vehicle is past
the RES when its plate is read. This increases the chance of
mismatching the vehicle identification to the wrong data file.
Furthermore, this reduces the number of vehicles that can be tested
in a given time, i.e. the vehicle throughput.
An optional speed sensor system determines the acceleration of an
oncoming vehicle and invalidates the subsequently measured data if
the acceleration is too high. The speed sensor system preferably
includes an oblique angle radar 54 that detects oncoming vehicles
and a CPU 56 that computes the vehicle's acceleration. Alternately,
a LIDAR system, piezeo or pneumatic cables, or an optical sensor
could be used to measure the vehicle's acceleration. Similar to the
video camera, the slant radar detects the oncoming vehicle at an
angle with respect to the road. The shallower the angle, the more
accurate the estimate of the acceleration using known techniques
but the lower the vehicle throughput. As a result, the known ALPR
and speed/acceleration algorithms are modified as shown in FIGS. 7
and 6, respectively, to enable steep angle detection.
The RES 12 includes a number of secondary components that are
required to support the data gathering process. A power supply 58
supplies power to the source 32, receiver 34, video camera 48,
radar 54, and the CPUs. A pair of fans 60 cool the electrical
systems in the RES 12. A pair of vents 62 vent the source and
calibration gas to the atmosphere. An external computer port 64
allows a service technician to connect a laptop computer to the RES
12 to access the CPUs and perform diagnostics.
An automated control system controls the data gathering process for
the RES 12. The primary function of the control system is to
maintain calibration so that the recorded data is reliable. A gas
canister 66 contains calibration gas that has a known composition
of pollutants. When actuated, the gas canister 66 emits a puff of
calibration gas in front of the source. This is used to both
recompute the calibration curves and to verify the calibration.
The RES 12 can lose calibration for a number of reasons. First, the
ambient conditions can change. For example, the CO.sub.2 levels
typically rise during the day, the HC levels near industrial plants
will also rise during the day, heavy traffic will increase the
background pollutant levels, and rain will destroy the IR
signature. Second, mechanical problems such as the gas bottle being
empty, the source being worn out, or a stolen reflector will result
in a loss of calibration. Another common source of signal
degradation is a dirty receiver lens. In known systems, when the
technician notices signal degradation he manually cleans the lens
on the receiver. In the automated RES, a multi-position lens cover
68 is placed in front of the receiver lens, and indexed when the
signal levels degrade.
A control CPU 70, as detailed in FIG. 5, automates the calibration,
verification, and data gathering processes by controlling the
actuation of the gas canister 66 and the indexing of the
multi-position lens cover 68 and monitoring the compositions of the
exhaust plume and ambient air. When repeated attempts to calibrate
the system fail, the CPU 70 sends a help mess over the
communications channel 18 shown in FIG. 1 via a communications port
72.
As shown in FIG. 3, the source 32 includes an IR source 74,
preferably a broadband IR source such as a glow bar, that has a
significant IR radiation output in the range of approximately 3
micrometers to approximately 6 micrometers. The IR source 74
provides a beam 24 that may optionally be passed through a chopper
76 (nominally 200 cycles per second) and a beam former 78, such as
a parabolic reflector. In the preferred embodiment, the receiver 34
(shown in detail in FIG. 4) uses solid state detectors which must
be turned on and off in order to detect the radiation levels. As a
result, the chopper 76 is positioned in the path of the IR beam to
block and unblock the beam and thereby switch the detectors on and
off.
In the preferred embodiment, the chopper 76 is positioned at the IR
source, which enables the system to distinguish infrared radiation
emitted by the source from that emitted by the vehicle exhaust.
When the chopper blocks the beam, the receiver measures the
infrared radiation emitted from the plume. The data processing CPU
calculates the peak-to-peak signal which removes the quiescent
levels of the receiver as well as the interference from the vehicle
exhaust. Thus, the measurements of the transmission levels are more
accurate. Alternately, the chopper 76 can be positioned at the
receiver. However, in this configuration the constituent
measurements can be distorted by irradiance from the plume
itself.
As shown in FIG. 4, the receiver 34 includes the multi-positioned
lens cover 68 that is periodically indexed to provide a clean
surface for receiving the IR beam 24. The multi-position lens cover
68 is preferably an IR transmissive sheet on a roller. The IR beam
is applied to a plurality n of narrow band filters 80, where n is
equal to a number of measurement channels. Each filter 80 is
selected so as to pass a predetermined narrow band of wavelengths
to an associated one of a plurality of IR detectors 82. The IR
detectors include photosensitive elements which are integrally
fabricated on a substrate. The elements are preferably
photoconductive and formed of mercury cadmium telluride (HgCdTe or
HCT), whereas the substrate is cadmium zinc telluride (CdZnTe).
Each detector 82 outputs an electrical signal corresponding to the
radiation level at its wavelength to an amplifier 84. An n channel
analog to digital (A/D) converter 86 digitizes the amplified
signals and outputs them to the data processing CPU 38 shown in
FIG. 2. A suitable cooler 88, such as a thermo-electric (TE)
device, is employed for cooling those types of IR detectors 82
which are required to be cooled to an operating point that is below
ambient temperature.
A beam integrator lens 90 is preferably placed between the lens
cover 68 and the filters 80 to homogenize the beam 24 after
propagation through the plume to remove the spatial and temporal
variations of the constituent concentrations so that the detected
signals are synchronized. The optical intensity or energy that is
incident on the photodetectors 82 is substantially uniform
throughout the cross-section of the homogenized beam 24. This
ensures that the same homogenized or averaged scene is sensed by
the photodetectors 82, and substantially increases the accuracy of
the measurement by reducing the spatial and temporal variance of
the constituent concentrations by over an order of a magnitude. The
beam integrator lens enables synchronous operation of the
photodetectors.
In a presently preferred embodiment of this invention there are six
spectral measurements channels. These are an NO spectral channel
(having a filter 80 with a passband centered on 5.26 .mu.m), an
H.sub.2O spectral channel (having a filter 80 with a passband
centered on 5.02 .mu.m), a first reference, or CO.sub.2 spectral
channel (having a filter 80 with a passband centered on 4.2 .mu.m),
a CO spectral channel (having a filter 80 with a passband centered
on 4.6 .mu.m), a HC spectral channel (having a filter 80 with a
passband centered on 3.3 .mu.m) and a second reference (REF)
spectral channel (having a filter 80 with a passband centered on
3.8 .mu.m). Additional channels to measure other pollutants can
also be added if desired.
In general, the NO spectral channel is located near resonant
absorption peaks in the vicinity of 5.2 .mu.m; the water vapor
spectral channel is in a region of strong water absorption where
fundamental lines do not saturate; the first reference spectral
channel is employed for normalizing the pollutants to the normal
combustion products, i.e., CO.sub.2; and the second reference (REF)
spectral channel is provided at a region in which no atmospheric or
automotive emissions gases absorb.
The REF spectral channel compensates the other five spectral
channels for variations caused by: (a) fluctuations in the output
of the IR source 74 shown in FIG. 3 during the passage of the
vehicle; (b) particulate matter in the form of road dust; (c)
particulate matter in the exhaust gas plume 28; (d) infrared
radiation emitted from the exhaust plume, and any other factors
that may reduce the amount of illumination reaching the detectors
82. The REF spectral channel thus operates to provide a baseline
output which is independent of the molecular species (NO, H.sub.2O,
CO.sub.2, CO and HC) being measured. The output of the second REF
spectral channel is used to normalize, such as by dividing, the
five molecular species spectral channels.
FIG. 5 is a flowchart of the automated control process executed by
the control CPU 70 shown in FIG. 2 in cooperation with the manned
control center 16 shown in FIG. 1. Once the RES is set up, the CPU
70 boots the system to a calibration mode (step 92) and uses the
speed and acceleration data provided by the CPU 56 to determine
whether a vehicle is approaching (step 94). If so, the CPU 70 waits
(step 96) until no vehicles are in range and performs a calibration
(step 98). The CPU 70 directs the gas canister to emit a puff of
calibration gas so that the data processing CPU uses the radiation
levels for the various pollutants and their known concentrations to
recompute a set of calibration curves. Thereafter, the CPU 70
switches to a measurement mode (step 100).
Once in measurement mode, the CPU 70 again determines whether a
vehicle is approaching (step 102), waits until no vehicle is in
range (step 104), and performs a puff-in-vehicle (PIV) test (step
106) to verify the calibration. The CPU 70 directs the gas canister
to emit another puff of calibration gas so that the data processing
CPU uses the calibration curves to compute a composition for the
calibration gas (step 108). If the composition deviates from a
known reference composition of the calibration gas then the
calibration is rejected. If calibration has failed repeatedly (step
110), for example 10 times in a row, the CPU 70 directs the RES to
notify the control center (step 112). Otherwise the CPU 70 repeats
steps 92 through 108 to recalibrate the system and verify the
calibration. When the composition calculated in step 108 is close
enough to the reference composition, the calibration is accepted
and data collection initiated (step 114). The data processing CPU
will generate an error code 9999 when the data, i.e. the sensed
radiation levels, is no good. Random and infrequent bad data is
expected as part of the sensing process. However, a high percentage
of bad data is indicative of a either a system problem such as an
occluded lens, beam misalignment or mechanical problems in the
source or the system being out of calibration. The CPU 70 monitors
the data (step 116), and if the frequency of error codes exceeds a
threshold, initiates recalibration by returning control to step
104. Otherwise, the data processing CPU continues gathering data
(step 118).
Because the ambient conditions can change over time, the CPU 70
periodically verifies the last calibration (step 120) by returning
control to step 102. The system continues gathering data (step 122)
in the measurement mode while the CPU 70 monitors the data
processing CPU to make sure that it is sampling the radiation
levels and computing compositions (step 124). If not, the CPU 70
assumes that the system software has failed, power cycles the
system (step 126) to reboot the software, performs a calibration
(step 128), and determines whether the calibration was effective
(step 130). If power cycling has restored the system, control
returns to step 102 to verify the calibration. Otherwise, the CPU
70 causes the RES to notify the control center (step 112).
If the data processing CPU is receiving and processing the data in
step 124, the CPU 70 monitors the ambient signal levels (radiation
levels or compositions) (step 132). If the ambient signal levels
are close enough to a set of reference values (step 134), for
example, the values measured at the last calibration, then data
gathering continues at step 114. If the signal levels have
deviated, the CPU 70 indexes the lens cover 68 shown in FIG. 4
(step 136). Oftentimes signal deviation is due to dirt or exhaust
building up on the lens of the receiver. Thereafter, the CPU 70
checks to determine whether the ambient signal levels have been
corrected (step 138). If so, the data processing CPU continues
gathering data (step 114). Otherwise, the CPU 70 performs a
calibration (step 140) and a PIV (step 142). If the calibration is
accepted, data gathering continues. If not, the RES notifies the
control center (step 112).
When the RES notifies the control center (step 112), a technician
at the control center executes remote diagnostics over the
communications channel to identify the problem (step 144). If the
system can be fixed remotely (step 146), control is returned to CPU
70 to gather data. Otherwise, a service technician is dispatched to
the RES (step 148).
In order to maintain the same vehicle throughput as the known RES
systems, the integrated RES radar 54 and video camera 48 shown in
FIG. 2 must detect the approaching and passing vehicles,
respectively, at a steep angle, approximately 20 to 35 degrees. As
shown in FIG. 6, the CPU 56 computes the apparent speed measured by
the radar 54 shown in FIG. 2 (step 150) and then corrects for what
is called "cosine error" (step 152) by multiplying the apparent
speed by the cosine of the detection angle (cos .theta.) to produce
an accurate reading of the oncoming vehicle's true speed. In step
154, the CPU computes the vehicle's acceleration. The vehicle's
speed and acceleration are used to determine whether the vehicle's
emissions systems are disabled and can be used to predict when the
vehicle should trigger data acquisition to reduce mismatch between
recorded emissions and the identified license plate as detailed in
FIG. 8.
As shown in FIG. 7, the preferred ALPR system deskews the picture
of the vehicle's license plate to compensate for the steep
detection angle prior to executing a character recognition
algorithm. When triggered, the video camera 48 takes a picture of
the passing vehicle's license plate at a step angle (.rho.),
approximately 20 to 35 degrees (step 156). The system's CPU 52
(shown in FIG. 2) digitizes the picture into a digital image and
transforms the skewed image into a normalized image, as if the
picture had been taken at a shallow angle of approximately zero
degrees (step 158). The steep-to-shallow angle transformation may
be achieved using an affine transformation, for example.
The CPU then executes a correlation algorithm on the first
character in the normalized image to generate a correlation value
for each character in an alpha-numeric set and selects the
character with the highest correlation value (step 160).
Thereafter, the correlation value of the selected character is
compared to a recognition threshold, e.g. 90% (step 162). If the
correlation value is less than the threshold, recognition is
rejected (step 164). If the correlation value exceeds the
threshold, the character is written into the ALPR file which is
appended to the recorded emissions data file (step 166). The
correlation algorithm is repeated for each character in the license
plate until all the characters have been recognized or rejected
(step 168). If only one or two of the characters in the license
plate are rejected, the plate may still be uniquely identifiable.
If so, the partial plate can be appended to the emissions data and
recorded. However, if too many characters in the entire license
plate are rejected, then the entire plate recognition is rejected
and the recorded emissions data is not reported (step 170).
A common problem is known RES systems is a mismatch between the
recorded emissions data and the license plate, i.e. the wrong car
is matched to the offending emissions. The steep angles used by the
radar and video camera reduce the frequency of mismatches to some
extent by confining the area in which they look for a passing
vehicle. As illustrated in FIG. 8, the mismatch frequency can be
further reduced by combining the speed and acceleration information
provided by the radar with the trigger signal. In step 172, the
data processing CPU computes the speed and acceleration of an
approaching vehicle as described in FIG. 6. The CPU uses this
information and the distance to the vehicle to estimate a
time-to-trigger range(step 174). When the vehicle passes through
the IR beam, the CPU records the trigger time (step 176) and
determines whether it falls within the time-to-trigger range (step
178). If the trigger falls within the range, the CPU merges the
emissions data with the license plates (step 180). Otherwise, the
CPU invalidates the data (step 182).
While several illustrative embodiments of the invention have been
shown and described, numerous variations and alternate embodiments
will occur to those skilled in the art. Such variations and
alternate embodiments are contemplated, and can be made without
departing from the spirit and scope of the invention as defined in
the appended claims.
* * * * *
References