Multi-sense environmental monitoring device and method

Information

  • Patent Grant
  • 10557839
  • Patent Number
    10,557,839
  • Date Filed
    Tuesday, December 13, 2016
    7 years ago
  • Date Issued
    Tuesday, February 11, 2020
    4 years ago
Abstract
Environmental monitoring devices for detecting and warning users of unhealthy levels of a given substance are disclosed having more than one sensor for each substance to be detected. A processing unit, wirelessly coupled to the sensors in the devices can be configured to receive each of the output signals from the sensors, determine a detection signal for the substance based on the output signals, determine a gain of a majority of the sensors, and generate a calibration action responsive to the output signals deviating by a threshold amount, wherein the calibration action comprises adjusting a gain of a deviating sensor to correspond with the gain of the majority of sensors.
Description
FIELD OF THE INVENTION

Embodiments of the present invention generally relate to environmental monitoring devices.


BACKGROUND OF THE INVENTION

In a number of industrial work environments workers are at risk of being exposed to a variety of hazardous environmental substances such as toxic or highly combustible gases, oxygen depleted environments, or radiation, etc. that pose a serious threat to worker safety. In order to keep workers safe, specialized environmental monitoring devices are used to alert workers of dangerous changes in their immediate environment.


Current practice involves using fixed point monitoring devices that monitor the environment around where they are deployed or portable monitoring devices that are carried by the workers to monitor their immediate vicinity. Fixed point monitoring devices are typically used around potential hazard locations such as confined spaces to warn workers of the environment before they enter. Portable monitoring devices are often used for personal protection. These monitoring devices may have a single sensor to monitor one specific substance or multiple sensors (typically two to six) each monitoring a distinct substance.


Given that these environmental monitoring devices are life critical, it is important the device functions properly and accurately. Current practice involves periodic bump testing and calibration of monitoring devices to guarantee proper functioning. Bump tests involve exposing the monitoring device to a measured quantity of gas and verifying that the device responds as designed, i.e., it senses the gas and goes into alarm. Calibration involves exposing the device to a measured quantity of gas and adjusting the gain of the sensors so it reads the quantity of gas accurately. The purpose of calibration is to maintain the accuracy of the monitoring device over time.


Current best practice followed by leading manufacturers of environmental monitors recommends bump testing the monitoring device before every days work and calibrating the device once at least every thirty days. While a number of manufacturers sell automated docking stations that automatically perform calibration and bump testing when a monitoring device is docked, there are still a number of disadvantages to the current practice.


A fixed bump and calibration policy, such as currently practiced, does not take into account the actual state of the sensors or the environmental monitoring device. Such a fixed policy (bump test every day and calibrate every thirty days) by its very nature is a compromise that is too stringent in many cases and too liberal in many others.


Given that the docking operation requires the user to bring the monitor to a central location, which typically is outside the work area, to perform the bump test and calibration, there is value in minimizing/optimizing this operation as much as possible without compromising safety.


Threshold limit values (TLV), namely the maximum exposure of a hazardous substance repeatedly over time which causes no adverse health effects in most people is constantly being reduced by regulatory authorities as scientific understanding and evidence grows and we accumulate more experience. Often these reductions are quite dramatic as in the case of the recent (February 2010) reduction recommended by the American Congress of Governmental Industrial Hygienists (ACGIH) for H2S exposure. The ACGIH reduced the TLV for H2S from a time weighted average (TWA) of 10 ppm to 1 ppm TWA averaged over eight hours. The effect of such reductions puts a premium on accuracy of measurements. Current practice of a fixed calibration policy, such as calibrate every thirty days, may not be enough to guarantee the level of accuracy to meet the more stringent emerging TLV's. While a blanket reduction in the frequency of the calibration interval, i.e., from thirty days, will help to improve accuracy, it would add significant cost to the use and maintenance of the environmental monitoring devices.


One solution to this problem, pursued by some, is to use newer and more advanced technology sensors with a higher degree of accuracy and tolerance to drift that minimize the need for calibration and bump testing. While there certainly is value in this approach, the cost of these emerging sensor often preclude its widespread use, particularly in personal monitoring applications where a large number of these monitors need to be deployed.


For all the aforementioned reasons there is value in developing monitors that use current low cost sensor technologies while still meeting emerging TLV regulations and allow for a more adaptive calibration/bump policy that takes into account the state of the sensors and monitoring devices.


SUMMARY OF THE INVENTION

In one general aspect, embodiments of the present invention generally pertain to a monitoring device having at least two sensors for each substance to be detected, a display, a processing unit, and an alarm. The sensors may be positioned on more than one plane or surface of the device. The processing unit may auto or self calibrate the sensors. Another embodiment relates to a network of monitoring devices. Other embodiments pertain to methods of monitoring a substance with a monitoring device having at least two sensors for that substance and auto or self calibrating the sensors.


Those and other details, objects, and advantages of the present invention will become better understood or apparent from the following description and drawings showing embodiments thereof.





BRIEF DESCRIPTION OF THE DRAWINGS

The accompanying drawings illustrate examples of embodiments of the invention. In such drawings:



FIGS. 1A, 1B and 1C illustrate monitoring devices having two sensors that detect the same substance and positioned on different planes or surfaces of the device, and FIG. 1D shows a monitoring device having three sensors according to various embodiments of the present invention;



FIG. 2 shows a block diagram illustrating a few of the components of the monitoring device according to various embodiments of the present invention;



FIG. 3 illustrates a flowchart of an example AI logic according to various embodiments of the present invention; and



FIG. 4A illustrates a monitoring device with the plurality of sensors housed in multiple housings and connected to a central processing unit and FIG. 4B illustrates a network of monitoring devices according to various embodiments of the present invention.





DETAILED DESCRIPTION

Various embodiments of the present invention pertain to a monitoring device and methods used for environmental monitoring of substances, such as, for example and without limitation, gases, liquids, nuclear radiation, etc.


In an embodiment, as illustrated in FIGS. 1A-C, the monitoring device 90 has at least two sensors, 200a and 200b, which detect the same substance. The sensors may be positioned in more than one plane or surface of the device 90. The device 90 also has a display 202; a user interface 102, such as, for example and without limitation, at least one key or key pad, button, or touch screen, for control and data entry; an alarm 203, shown in FIGS. 1C and 1D, such as, for example and without limitation, audio, visual, or vibration; and a housing 104. The monitoring device 90 may have a user panic button 106, shown in FIGS. 1A and 1B, that allows the user to trigger an alarm mechanism. In an example, as shown in FIGS. 1A and 1B, sensor 200a and 200b are on opposite sides of the device 90. In another example, as shown in FIG. 1C, sensor 200a is on the front of the device 90 and sensor 200b on the top. In yet another example, as shown in FIG. 1D, the device 90 has three sensors, 200a-c, sensing the same substance and positioned in different planes or surfaces of the device 90. The position of the sensors 200 in different and multiple planes greatly reduces the likelihood of more than one sensor failing, for example by being clogged by debris from the device 90 being dropped. The monitoring device 90 may have more than one sensor 200 for each substance to be detected, i.e., the device 90 may detect more than one substance. The sensors 200 for each substance may be positioned on more than one plane or surface of the device 90. For example, the device 90 may have two sensors 200a and 200b for H2S positioned on different surfaces or planes, e.g., one on the top and one on the side, of the device 90 and two sensors 200c and 200d for oxygen positioned on different surfaces or planes of the device 90, e.g., one on top and one on the side.


In another embodiment the monitoring device 90, as shown in FIG. 2, has a plurality of sensors 200a-n that detect the same substance. One benefit of using more than one sensor 200 for each substance to be detected is reduction in the frequency of bump testing and calibration of the monitoring devices. As an example, in practice monitoring device types typically used for gas detection have been found to fail at a rate of 0.3% a day based on field analysis data and thus daily bump tests have been mandated; however, equivalent safety may be gained with two sensors by bump testing every week, thereby reducing bump testing by seven fold.


In further embodiments, the monitoring device 90, as shown in FIG. 2, has a processing unit 201; a plurality of sensors 200a-n that sense the same substance, such as, for example and without limitation, a gas; a display 202; an alarm 203 that would generate an alarm, for example and without limitation, an audio, visual, and/or vibratory alarm; and a memory 204 to store, for example and without limitation, historic sensor and calibration/bump test data. The processing unit 201 interfaces with the sensors 200a-n and determines the actual reading to be displayed. The actual reading may be, for example and without limitation, the maximum, minimum, arithmetic, mean, median, or mode of the sensor 200a-n readings. The actual reading may be based on artificial intelligence (AI) logic. The AI logic mechanism takes into account, for example and without limitation, the readings from the plurality of sensors 200a-n, historic sensor performance data in the memory 204, span reserve of the sensor 200, gain of the sensor 200, temperature, etc., to determine the actual reading. In another example, as an alternative to the displayed actual reading being the maximum of the aggregate of the n sensors 200a-n, the displayed actual reading may be calculated as follows, where R denotes the displayed reading and Ri denotes the reading sensed by sensor i:






R
=





Σ

i
=
0

n



R
i
k


n

k

.






Then, the processing unit may display possible actions that need to be taken based on the actual reading derived, for example and without limitation, activate the alarm, request calibration by user, indicate on the display that the sensors are not functioning properly, indicate the current reading of gas or other substance in the environment, auto calibrate sensors that are out of calibration, etc.


One example of the artificial intelligence logic method would be for the greater readings of the two sensors 200a and 200b or the greater readings of a multitude of sensors 200a-n to be compared with a threshold amount, and if the sensor reading crosses the threshold amount, an alarm mechanism would be generated. Another example of AI logic entails biasing the comparison between the sensor readings and the threshold amount by weights that are assigned based on the current reliability of the sensors 200a-n, i.e., a weighted average. These weights can be learned, for example and without limitation, from historic calibration and bump test performance. Standard machine learning, AI, and statistical techniques can be used for the learning purposes. As an example, reliability of the sensor 200 may be gauged from the span reserve or alternatively the gain of the sensor 200. The higher the gain or lower the span reserve, then the sensor 200 may be deemed less reliable. Weights may be assigned appropriately to bias the aggregate substance concentration reading (or displayed reading) towards the more reliable sensors 200a-n. Consider R to denote the displayed reading, Ri to denote the reading sensed by sensor I, and wi to denote the weight associated by sensor i:






R
=



Σ

i
=
1

n



w
i

*

R
i


n






where the weight wi (0<w≥1) is proportional to span reading of sensor i or inversely proportional to the gain Gi. Alternatively, wi can be derived from historical data analysis of the relationship between the gain wi and span reserve or gain Gi. Historical data of bump tests and calibration tests performed in the field, for example and without limitation, can be used to derive this data.


In addition, as illustrated in FIG. 3, if the difference in readings between any two or more sensors 200 is greater than some threshold value tc, which could be determined in absolute terms or relative percentage terms and may vary by substance, then the monitoring device 90 would generate an alarm or visual indication in the display 202 requesting a calibration by docking on a docking station or manually be performed on the device 90. Further, if the difference in readings is greater than some higher threshold value tf, the monitoring device 190 would generate an alarm and or indicate on the display 202 a message indicating a sensor failure.


In some circumstances, for example and without limitation, in the case of an oxygen sensor, the minimum reading of a multitude of sensors 200a-n may be used to trigger an alarm to indicate a deficient environment.


In another embodiment, the monitoring device 90 may have an orientation sensor, such as, for example and without limitation, an accelerometer, that would allow the artificial intelligence logic to factor in relative sensor orientation to account for the fact that heavier than air gases, for example, would affect sensors in a lower position more than on a higher position and lighter than air sensors would. The degree of adjustment to the reading based on orientation can be learned, for example and without limitation, from the calibration data, field testing, distance between sensors, etc. and used to adjust readings from multiple positions on the device 90 to give the most accurate reading at the desired location, such as the breathing area of a user or a specific location in a defined space using the environmental monitoring device 90 as a personnel protection device.


Another embodiment pertains to a network 500 having the plurality of sensors 200a-n that detect a single substance housed in separate enclosures, placed in the vicinity of one another, e.g., from inches to feet depending on the area to be monitored, and communicate with one another directly and/or the central processing unit through a wireless or wired connection. See FIGS. 4A and 4B. Each of the housings 104 may have a separate processing unit 201, memory 204, and AI processing logic, as shown in FIG. 4B. Alternatively, or in combination, sensor units would share a central processing unit 201 and memory 204, as shown in FIG. 4A.


Based on the plurality of sensor readings 200a-n, the processing unit, using standard AI and machine learning techniques, etc., will adjust the gain of the sensors 200a-n to match closer to the majority of sensors 200a-n for each substance, i.e., minimize variance among the sensors. The variance may be, for example and without limitation, a statistical variance, other variance metrics such as Euclidean distance, or calculated from the average, weighted average, mean, median, etc. readings of the sensors. This would allow auto or self calibration of outlying sensors 200a-n without the use of calibration gas using a manual method or a docking station. In an example, if n sensors 200a-n sensing a particular gas, such as H2S, are considered and Ri is the reading that represents the concentration of H2S sensed by sensor i and M is the median value of the reading among the n sensors, then the gain, given by Gi,, of each sensor can be adjusted so that the reading Ri moves towards the median value by a small amount given by weight w(0<w≥1). For each sensor i in (1,n):







G
i

=


G
i

*


(

w
*


R
i

M


)



G
i

=


G
i

*

(

w
*


R
i

M


)










Performing such gain adjustment whenever the monitoring device 90 is exposed to a substance in the field, for example, as part of day-to-day operation will reduce the frequency of calibrations required, thus saving money both directly from the reduction in calibration consumption, such as gas, and also costs involved in taking time away to perform the calibration. Current monitoring devices that use a single gas sensor for detecting each gas type require a more frequent calibration schedule, thereby incurring significant costs.


While presently preferred embodiments of the invention have been shown and described, it is to be understood that the detailed embodiments and Figures are presented for elucidation and not limitation. The invention may be otherwise varied, modified or changed within the scope of the invention as defined in the appended claims.


EXAMPLE

The following discussion illustrates a non-limiting example of embodiments of the present invention.


A single gas monitor that is used as a small portable device worn on the person and used primarily as personal protection equipment may be used to detect the gases within the breathing zone of the bearer of the device. The gas monitor is designed to monitor one of the following gases:












Measuring Ranges:












Gas
Symbol
Range
Increments






Carbon Monoxide
CO
0-1,500
  1 ppm



Hydrogen Sulfide
H2S
0-500 ppm
0.1 ppm



Oxygen
O2
0-30% of volume
0.1%



Nitrogen Dioxide
NO2
0-150 ppm
0.1 ppm



Sulfur Dioxide
SO2
0-150 ppm
0.1 ppm









The sensors are placed on two separate planes of the monitoring device, for example as depicted in FIGS. 1A-C. The gas concentration of the reading is calculated in the following manner:






reading
=




SensorReading






1
5


+

SensorReading






2
5




2





If the reading is higher (or lower in the case of oxygen) than a user defined alarm threshold, then an audio and visual alarm is generated.


Further, if reading>0.5*abs(alarmThreshold−normalReading) and if






0.3



abs


(


sensorReading





1

-

sensorReading





2


)



max


(


sensorReading





1

,

sensorReading





2


)




0.5





then an auto calibrate function based on gain as described below is performed. The auto calibration may be done, based on a user defined setting in the monitoring device, without further input from the user of the monitoring device, and/or the user will be informed that the gas monitor has detected an anomaly and requests permission to auto calibrate.


If








abs


(


sensorReading





1

-

sensorReading





2


)



max


(


sensorReading





1

,

sensorReading





2


)



>
0.5





then a message is displayed to the user to calibrate the gas monitor immediately using a calibration gas.


Gain of each of the sensors is modified as follows in the auto or self calibration process:







sensorGain
new

=


sensorGain
old

+

0.1
*


max


(


sensorReading





1

,

sensorReading





2


)



min


(


sensorReading





1

,

SensorReading





2


)








Claims
  • 1. A system, comprising: a plurality of monitoring devices, wherein each of the plurality of monitoring devices comprises at least one sensor configured to detect a substance and to generate an output signal indicative of a concentration of the substance in response to a detection of the substance, wherein the at least one sensor in each of the plurality of monitoring devices is configured to detect a same substance, wherein an amount of the substance has not been determined prior to the detection of the substance;a processing unit, wirelessly coupled to the at least one sensor in each of the plurality of monitoring devices, configured to:receive each output signal from each of the at least one sensor in each of the plurality of monitoring devices in response to the detection of the sub stance;generate a detection signal for the substance indicative of the amount of the substance based on the output signals from the at least one sensor in each of the plurality of monitoring devices;determine a corresponding gain of each of the at least one sensor in each of the plurality of monitoring devices and an overall gain of a majority of the at least one sensor in each of the plurality of monitoring devices based on the determined corresponding gains;generate a calibration action responsive to any of the output signals deviating by an amount from the detection signal, wherein the calibration action comprises only adjusting a corresponding gain of a corresponding deviating sensor to correspond with the determined overall gain of the majority of the at least one sensor in each of the plurality of monitoring devices;determine a weight of each of the at least one sensor configured to indicate a reliability of each of the at least one sensor, wherein the weight for each of the at least one sensor is determined based on at least one of a span reserve of the at least one sensor, a historic calibration performance of the at least one sensor, or a historic bump test performance of the at least one sensor; anddetermine an aggregate substance concentration reading by aggregating the output signals from each of the at least one sensor biased toward output signals from sensors indicated as being more reliable based on the weight.
  • 2. The system of claim 1, further comprising, an alarm operably coupled to the processing unit, the alarm configured to be activated responsive to the detection signal deviating from a level that corresponds to a predetermined concentration of the substance.
  • 3. The system of claim 1, wherein the plurality of monitoring devices are configured to wirelessly communicate with one another.
  • 4. The system of claim 1, further comprising, a display operably coupled to the processing unit configured to display a reading for the substance in accordance with the output signals.
  • 5. The system of claim 4, wherein the reading is at least one of a maximum, a minimum, a mean, a median, or a mode of the output signals.
  • 6. The system of claim 4, wherein the reading is based on artificial intelligence (AI) logic that takes into account at least one of the output signals from the sensors, a historic sensor performance data, a span reserve of the sensors, a gain of the sensors, or a temperature.
CROSS-REFERENCE TO RELATED APPLICATION

This application is a continuation of U.S. application Ser. No. 14/676,443, entitled “Multi-Sense Environmental Monitoring Device and Method”, filed Apr. 1, 2015 which is a continuation of U.S. application Ser. No. 13/168,577 entitled “Multi-Sense Environmental Monitoring Device and Method,” filed Jun. 24, 2011, which claims benefit of priority to U.S. Provisional Patent Application No. 61/358,729 filed on Jun. 25, 2010 entitled “Multi-Sense Environmental Monitoring Device and Method,” the entire contents of which are hereby incorporated by reference in their entirety.

US Referenced Citations (136)
Number Name Date Kind
1797891 Young et al. Mar 1931 A
4416911 Wilkinson-Tough Nov 1983 A
4457954 Dabill et al. Jul 1984 A
4473797 Shiota Sep 1984 A
4525872 Zochowski et al. Jun 1985 A
4775083 Burger et al. Oct 1988 A
4931780 Lamont et al. May 1990 A
4963855 Kojima et al. Oct 1990 A
5005419 O'Donnell et al. Apr 1991 A
5101271 Andrews Mar 1992 A
5138559 Kuehl et al. Aug 1992 A
5243152 Magid et al. Sep 1993 A
5493273 Smurlo Feb 1996 A
5568121 Lamensdorf Oct 1996 A
5778062 Vanmoor et al. Jul 1998 A
5916180 Cundari Jun 1999 A
5932176 Yannopoulos et al. Aug 1999 A
6182497 Krajci Feb 2001 B1
6466608 Hong et al. Oct 2002 B1
6629152 Kingsbury et al. Sep 2003 B2
6644098 Cardinale et al. Nov 2003 B2
6649876 Cardinale Nov 2003 B2
6703840 Cardinale Mar 2004 B2
6822573 Basir et al. Nov 2004 B2
7020508 Stivoric et al. Mar 2006 B2
7463142 Lindsay et al. Dec 2008 B2
7471200 Otranen Dec 2008 B2
7587619 Ryan Sep 2009 B2
7613156 Rittle et al. Nov 2009 B2
7649872 Naghian et al. Jan 2010 B2
7688802 Gonia et al. Mar 2010 B2
7697893 Kossi et al. Apr 2010 B2
7778431 Feng et al. Aug 2010 B2
7880607 Olson et al. Feb 2011 B2
7885291 Delaney Feb 2011 B2
7888825 Koshi et al. Feb 2011 B2
7895309 Belali et al. Feb 2011 B2
7917673 Suh Mar 2011 B2
7970871 Ewing et al. Jun 2011 B2
7978717 Banks et al. Jul 2011 B2
8009437 Shelton et al. Aug 2011 B2
8035491 Banks Oct 2011 B2
8081590 Patterson et al. Dec 2011 B2
8085144 Appelt et al. Dec 2011 B2
8086285 McNamara et al. Dec 2011 B2
8180075 Nelson et al. May 2012 B2
8204971 Ewing et al. Jun 2012 B2
8224246 Suumaki et al. Jul 2012 B2
8294568 Barrett et al. Oct 2012 B2
8358214 Gingrave et al. Jan 2013 B2
8385322 Colling et al. Feb 2013 B2
8400317 Johnson et al. Mar 2013 B2
8416120 Kim Apr 2013 B2
8418064 Guagenti et al. Apr 2013 B2
8438250 Ewing et al. May 2013 B2
8442801 Gonla et al. May 2013 B2
8462707 Husney Jun 2013 B2
8494502 Abel et al. Jul 2013 B2
8514087 Little et al. Aug 2013 B2
8547888 Filoso et al. Oct 2013 B2
8585606 McDonald et al. Nov 2013 B2
8587414 Bandyopadhyay et al. Nov 2013 B2
8638228 Amigo et al. Jan 2014 B2
8665097 Stinson et al. Mar 2014 B2
8792401 Banks et al. Jul 2014 B2
8805430 Olsen et al. Aug 2014 B2
8818397 Shikowitz et al. Aug 2014 B2
8868703 Ewing et al. Oct 2014 B2
8885513 Ewing Nov 2014 B2
9000910 Arunachalam Apr 2015 B2
9195866 Mehranfar et al. Nov 2015 B1
9536418 Mao et al. Jan 2017 B2
9575043 Arunachalam Feb 2017 B2
9743221 Javer et al. Feb 2017 B2
9619986 Seol Apr 2017 B2
9721456 Thurlow et al. Aug 2017 B2
9792808 Gnanasekaran et al. Oct 2017 B2
9847008 Hunter et al. Dec 2017 B2
10055971 M R et al. Aug 2018 B2
10062260 Hunter et al. Aug 2018 B2
20010050612 Shaffer Dec 2001 A1
20020009195 Schon et al. Jan 2002 A1
20020126002 Patchell et al. Sep 2002 A1
20020146352 Wang et al. Oct 2002 A1
20020155622 Slater et al. Oct 2002 A1
20030150252 Wang et al. Aug 2003 A1
20030159497 Warburton et al. Aug 2003 A1
20030180445 Wang et al. Sep 2003 A1
20050083194 Shen et al. Apr 2005 A1
20050202582 Eversmann Sep 2005 A1
20050243794 Yoon et al. Nov 2005 A1
20060019402 Wang et al. Jan 2006 A1
20060224357 Taware et al. Oct 2006 A1
20060257289 Martens et al. Nov 2006 A1
20070000310 Yamartino et al. Jan 2007 A1
20070078608 Broy et al. Apr 2007 A1
20070171042 Metes et al. Jul 2007 A1
20070241261 Wendt Oct 2007 A1
20070257806 Madden Nov 2007 A1
20080015794 Eiler Jan 2008 A1
20080038590 Nakakubo et al. Feb 2008 A1
20080058614 Banet et al. Mar 2008 A1
20080122641 Amidi et al. May 2008 A1
20080146895 Olson et al. Jun 2008 A1
20080240463 Florencio et al. Oct 2008 A1
20090089108 Angell et al. Apr 2009 A1
20090115654 Lo et al. May 2009 A1
20090210257 Chalfant et al. Aug 2009 A1
20090312976 Bingham et al. Dec 2009 A1
20100072334 Le Gette et al. Mar 2010 A1
20100267407 Liao et al. Oct 2010 A1
20110022421 Brown et al. Jan 2011 A1
20110115623 Gnanasekaran et al. May 2011 A1
20110161885 Gonia et al. Jun 2011 A1
20120150755 Kumar et al. Jun 2012 A1
20120176237 Tabe et al. Jul 2012 A1
20130006064 Reiner et al. Jan 2013 A1
20130057391 Salvador et al. Mar 2013 A1
20130253809 Jones et al. Sep 2013 A1
20130278412 Kelly et al. Oct 2013 A1
20140122537 Stivoric et al. May 2014 A1
20140233458 Georgescu et al. Aug 2014 A1
20140274155 Langberg Sep 2014 A1
20140310349 Rainisto Oct 2014 A1
20140368354 Skourlis Dec 2014 A1
20150025917 Stempora Jan 2015 A1
20150145649 Michaud et al. May 2015 A1
20150145685 Albinger et al. May 2015 A1
20150161876 Castillo Jun 2015 A1
20150163652 Michaud et al. Jun 2015 A1
20160209386 Belski et al. Jul 2016 A1
20160334378 Maddila et al. Nov 2016 A1
20170132884 Kumar et al. May 2017 A1
20170303187 Crouthamel et al. Oct 2017 A1
20180024091 Wang et al. Jan 2018 A1
20180082565 Braiman Mar 2018 A1
Foreign Referenced Citations (21)
Number Date Country
2017219135 Nov 2018 AU
2803246 Dec 2011 CA
2135808 Jun 1993 CN
104903953 Sep 2015 CN
105092796 Dec 2018 CN
2586018 May 2013 EP
3227808 Oct 2017 EP
3228068 Oct 2017 EP
2287789 Nov 2017 EP
3510386 Jul 2019 EP
2423400 Aug 2006 GB
2002344602 Nov 2002 JP
2007193773 Aug 2007 JP
1995026492 Oct 1995 WO
2008111755 Sep 2008 WO
2011163604 Dec 2011 WO
2014184638 Nov 2014 WO
2016005805 Jan 2016 WO
2017142847 Aug 2017 WO
2018048517 Mar 2018 WO
2018165883 Sep 2018 WO
Non-Patent Literature Citations (18)
Entry
“RECON/4 Manual”, ENMET Corporation, Jun. 22, 2009, p. 1-10.
“Solaris Multigas Detector”, “Solaris Multigas Detector”, Solaris Mul tigas Manual, Jan. 1, 2005, p. 1-162.
“Wearable Sensors in Transportation—Exploratory Advanced Research Program Initial Stage Investigation”, The Exploratory Advanced Research Program, Mar. 2016, 52 pages.
13741909.9, “European Application Serial No. 13741909.9, Communication pursuant to Article 94(3) EPC dated Jan. 4, 2017”, Industrial Scientific Corporation, 7 Pages.
2013325257, “Australian Application Serial No. 2013325257, First Examination Report dated Jul. 24, 2017”, Industrial Scientific Corporation, 3 Pages.
2015261602, “Australian Application Serial No. 2015261602, First Examiner Report dated Sep. 2, 2016”, Industrial Scientific Corporation, 3 Pages.
2015261602, “Australian Application Serial No. 2015261602, Second Examiner Report dated Aug. 17, 2017”, Industrial Scientific Corporation, 4 Pages.
Azhari, et al., “On the Performance of Off-Body Links for a Wireless Body Area Network in an Underground Mining Environment”, International Journal of Computer Science and Innovation, vol. 2015, No. 2,, 2015, pp. 53-67.
Ding, et al., “Redundant Sensor Calibration Monitoring Using Independent Component Analysis and Pricipal Component Analysis”, p. 27-47.
Dorsavi, “ViPerform—Provides Objective Data to Accurately Assess Risk of Injury, Guide Training Programs, and Help Determine When It's Safe to Return to Play”, Available online at <http://us.dorsavi.com/viperform/>, retrieved on Jul. 10, 2016, 12 pages.
Giang, “Companies Are Putting Sensors on Employees to Track Their Every Move”, http://www.businessinsider.com/tracking-employees-with-productivity-sensors-2013-3, Mar. 14, 2013, 1-4.
Giang, “Companies Are Putting Sensors on Employees to Track Their Every Move”, Tracking Employees With Productivity Sensors—Business Insider, Available online at <http://www.businessinsider.com/tracking-employees-with-productivity-sensors-2013-3>, Mar. 14, 2013, pp. 1-4.
Mayton, et al., “TRUSS: Tracking Risk with Ubiquitous Smart Sensing”, In 2012 IEEE Sensors, Institute of Electrical and Electronics Engineers (IEEE) 2012, pp. 1-4.
Peaksoft Technologies, “Big Idea Seeing Crime Before It Happens”, Available online at <http://www.pstpl.com/news184.html>, Dec. 3, 2011, pp. 1-2.
2017219135, “Australian Application Serial No. 2017219135, First Examination Report dated Mar. 27, 2018”, Industrial Scientific Corporation, 4 pages.
PCT/US2017/044735, “International Application Serial No. PCT/US2017/044735, International Search Report and Written Opinion dated Jan. 18, 2018”, Industrial Scientific Corporation, 14 Pages.
PCT/US2017/044735, “International Application Serial No. PCT/US2017/044735, Invitation to Pay Additional Fees and, Where Applicable, Protest Fee dated Nov. 7, 2017”, Industrial Scientific Corporation, 2 Pages.
PCT/US2017/044735, “International Application Serial No. PCT/US2017/044735, International Preliminary Report on Patentability and Written Opinion dated Mar. 21, 2019”, Industrial Scientific Corporation, 6 pages.
Related Publications (1)
Number Date Country
20170102369 A1 Apr 2017 US
Provisional Applications (1)
Number Date Country
61358729 Jun 2010 US
Continuations (2)
Number Date Country
Parent 14676443 Apr 2015 US
Child 15376823 US
Parent 13168577 Jun 2011 US
Child 14676443 US