The present invention generally relates to Internet of Things (IoT), and more particularly relates to an IoT-based system for predictive and preventive maintenance of machines that uses a blower and a pump, through machine learning and physics based modeling of physical parameters like vibration, sound, temperature monitored by machine wearable and other related sensors.
Internet of Things (IoT) is a network of uniquely-identifiable and purposed “things” that are enabled to communicate data over a communications network without requiring human-to-human or human-to-computer interaction. The “thing” in the Internet of Things may virtually be anything that fits into a common purpose thereof. For example, a “thing” could be a person with a heart rate monitor implant, a farm animal with a biochip transponder, an automobile comprising built-in sensors configured to alert its driver when the tire pressure is low, or the like, or any other natural or man-made entity that can be assigned with a unique IP address and provided with the ability to transfer data over a network. Notably, if all the entities in an IoT are machines, then the IoT is referred to as a Machine to Machine (M2M) IoT or simply, as M2M IoT.
It is apparent from the aforementioned examples that an entity becomes a “thing” of an M2M IoT especially, when the entity is attached with one or more sensors capable of capturing one or more types of data pertaining to: segregation of the data (if applicable); selective communication of each segregation of data to one or more fellow “things”; reception of one or more control commands (or instructions) from one or more fellow “things” wherein, the control commands are based on the data received by the one or more fellow “things”; and execution of the commands resulting in manipulation or “management” of an operation of the corresponding entity. Therefore, in an IoT-enabled system, the “things” basically manage themselves without any human intervention, thus drastically improving the efficiency thereof.
EP Patent No. 1836576 B1 discusses a diagnostic method of failure protection of vacuum pumps. Based on comparison of the currently evaluated diagnostics analysis results and an initial data, maintenance engineers would decide the replacement of the considered vacuum pump, according to the evaluated pump performance indicators. However, in this prior art invention, there is no mention of machine learning or use of machine wearable sensors. Also, the remedial decisions are left to the maintenance engineers.
US Patent application 20120209569 A1 discusses a method for predicting a failure in rotation of a rotor of a vacuum pump. The prior art invention fails to disclose machine learning capabilities and also is dependent on an observation time prediction window. Further, the prior art fails to disclose machine wearable sensors and Internet of things.
U.S. Pat. No. 7,882,394 B2 discusses fault diagnostics through a data collection module. The prior art discloses a system for condition monitoring and fault diagnosis that includes: a data collection function that acquires time histories of selected variables for one or more of components; a pre-processing function that calculates specified characteristics of time histories; an analysis function for evaluating the characteristics to produce one or more hypotheses of a condition of the components, and a reasoning function for determining the condition of the components from one or more hypotheses. The prior art invention however, fails to suggest the concept of IoT. Further, the prior art invention does not mention machine learning for effective predictive or preventive maintenance of vacuum pumps or similar devices.
It is evident from the discussion of the aforementioned prior art that none of them discloses or suggests regarding predictive and preventive maintenance of vacuum pumps through machine learning. Therefore, there is a need in the art for a solution to the aforementioned problem.
A method of machine learning architecture according to the present invention includes a step of: receiving data from machine wearable sensors placed on a motor (henceforth motor sensor data) and a blower (henceforth a blower sensor data) over a communications network. The machine wearable sensors can be selected from a group consisting of vibration sensors, temperature sensors, magnetic field sensors, gyroscope and its combinations thereof. The sensor type can be single silicon or MEMS (Micro-electromechanical systems) type. The motor or blower sensor data is classified into one of a vacuum state sensor data and vacuum break state (where rotor is switched off and the revolution of the rotor is gradually damping in vacuum medium) sensor data, wherein the vacuum state sensor data is further analyzed to detect an operating vacuum level and an alarm is raised when the vacuum state sensor data exceeds a pre-defined safety range. The vacuum break state sensor data is then classified into clean filter category and clogged filter category and an alarm is raised if the real time data of sensors belonging to clogged filter category is detected. Vacuum state data is further classified based on a multi-class learning model which classifies a pump running with machine oil into clean, old, leaked or overfilled classes. If the sensor data suggest neither, it is classified under uncategorized bearing issues. The blower sensor data in association with the motor sensor data is analyzed based on machine learning to detect deficient oil level and deficient oil structure.
An IoT based machine learning architecture according to an embodiment of the present invention includes: a vacuum pump associated with a blower and a motor coupled with one or more machine wearable sensors; a communications network; and a mobile application associated with a mobile device. The mobile application is communicatively coupled to one or more machine wearable sensors, over the communications network. The mobile application can be replaced by a PC based communication such as a PC based app, as well. The machine learning architecture receives sensor data from the blower and the motor and classifies the motor sensor data into vacuum state sensor data and break state sensor data. Also, the machine learning architecture analyzes the vacuum state sensor data to detect an operating vacuum level and an alarm is raised when the vacuum state sensor data exceeds a pre-defined safety range. The machine learning architecture classifies vacuum break data into clean filter category and clogged filter category and an alarm is raised if an entry under the clogged filter category is detected, and the machine learning architecture further analyzes the blower sensor data in association with the motor sensor data through a machine learning algorithm in order to detect at least one of a deficient oil level and a deficient oil structure.
The present invention relates to an Internet of Things (IoT) based system for overseeing process control and predictive maintenance of a machine or a network of machines by employing machine wearable sensors. The IoT based system includes a plurality of machine-wearable sensors, secured to the exterior of the machine. These sensors can be any combination of Temperature sensors, Vibration sensors, Magnetometer, Gyroscope. Each sensor is capable of transmitting captured data wirelessly over a communications network. The IoT based system further includes a sensor network for receiving and transmitting the captured data over a communications network. The system also includes: a machine learning algorithm engine capable of receiving data from the sensor network and processing the received data to recognize one of a pattern and a deviation to issue an alarm and appropriate control commands pertaining to the machine. The system further includes one or more control modules disposed in operative communication with the control panel of the machine, wherein the control module is capable of receiving the control commands over a communications network and executing the control commands.
The methods and systems disclosed herein may be implemented in any means for achieving various aspects, and may be executed in a form of a machine-readable medium embodying a set of instructions that, when executed by a machine, cause the machine to perform any of the operations disclosed herein. Other features will be apparent from the accompanying drawings and from the detailed description that follows.
The embodiments of this invention are illustrated in a non-limiting but in a way of example, in the figures of the accompanying drawings, in which like references indicate similar elements and in which:
Example embodiments, as described below, may be used to provide a method, an apparatus and/or a system of real time machine learning based predictive and preventive maintenance of a vacuum pump. Although the present embodiments have been described with reference to specific exemplary embodiments, it will be evident that various modifications and changes may be made to these embodiments without departing from the broader spirit and scope of the invention.
In one or more embodiments, the motor sensor data may be determined from a machine wearable sensor placed on the motor. Similarly, the blower sensor data may also be determined from a machine wearable sensor placed on the blower. The communications network may include WiFi, 2G, 3G, 4G, GPRS, EDGE, Bluetooth, ZigBee, Piconet of BLE, Zwave, or a combination thereof.
In one or more embodiments, the machine learning architecture may be associated with a machine learning algorithm. The motor sensor data and blower sensor data may be received over a communications network onto a mobile application coupled to a mobile device. The alarm may be raised over the communications network through one of a notification on the mobile application including short message service (SMS), email, or a combination thereof.
In one or more embodiments, machine learning of a vibrational data may comprise of information related to shape factor of the vibration calculated as a ratio of moving RMS (root mean square) value to moving average of absolute value.
In a networked deployment, the machine may operate in the capacity of a server and/or as a client machine in server-client network environment, and or as a peer machine in a peer-to-peer (or distributed) network environment. The machine may be a personal-computer (PC), a tablet PC, a set-top box (STB), a Personal Digital Assistant (PDA), a cellular telephone, a web appliance, a network router, switch and or bridge, an embedded system and/or any machine capable of executing a set of instructions (sequential and/or otherwise) that specify actions to be taken by that machine. Further, while only a single machine is illustrated, the term “machine” shall also be taken to include any collection of machines that individually and/or jointly execute a set (or multiple sets) of instructions to perform any one and/or more of the methodologies discussed herein.
The exemplary computer system 200 includes a processor 202 (e.g., a central processing unit (CPU) a graphics processing unit (GPU) and/or both), a main memory 204 and a static memory 206, which communicate with each other via a bus 208. The computer system 200 may further include a video display unit 210 (e.g., a liquid crystal displays (LCD) and/or a cathode ray tube (CRT)). The computer system 200 also includes an alphanumeric input device 212 (e.g., a keyboard), a cursor control device 214 (e.g., a mouse), a disk drive unit 216, a signal generation device 218 (e.g., a speaker) and a network interface device 220.
The disk drive unit 216 further includes a machine-readable medium 222 on which one or more sets of instructions 224 (e.g., software) embodying any one or more of the methodologies and/or functions described herein is stored. The instructions 224 may also reside, completely and/or at least partially, within the main memory 204 and/or within the processor 202 during execution thereof by the computer system 200. The main memory 204 and the processor 202 also constituting machine-readable media.
The instructions 224 may further be transmitted and/or received over a network 226 via the network interface device 220. While the machine-readable medium 222 is shown in an exemplary embodiment to be a single medium, the term “machine-readable medium” should be taken to include a single medium and/or multiple media (e.g., a centralized and/or distributed database, and/or associated caches and servers) that store the one or more sets of instructions. The term “machine-readable medium” shall also be taken to include any medium that is capable of storing, encoding and/or carrying a set of instructions for execution by the machine and that causes the machine to perform any one or more of the methodologies of the various embodiments. The term “machine-readable medium” shall accordingly be taken to include, but not be limited to, solid-state memories, optical and magnetic media, and carrier wave signals.
In one or more embodiments, the method of machine learning architecture may also include determining motor sensor data from machine wearable sensor placed on the motor and determining blower sensor data from machine wearable sensor placed on the blower.
In one or more embodiments, the communications network may include WiFi, 2G, 3G, 4G, GPRS, EDGE, Bluetooth, ZigBee, Piconet of BLE, Zwave, or a combination thereof. The machine learning architecture may be associated with a machine learning algorithm.
In one or more embodiments, the motor sensor data and blower sensor data may be received over a communications network onto a mobile application associated with a mobile device and an alarm may be raised over the communications network through one of a notification on the mobile application, short message service (SMS), email, or a combination thereof.
In an exemplary embodiment, the Internet of Things (IoT) based system may include machine wearable sensors. Further, the IoT system may be used for overseeing process control and predictive maintenance of a machine or a network of machines. The system may include a plurality of machine-wearable sensors, each of which is secured to the exterior of the machine. Each sensor may be capable of transmitting captured data wirelessly over a communications network. The system may further include a sensor network for receiving and transmitting the captured data over a communications network and a machine learning algorithm engine capable of receiving data from the sensor network. The machine learning algorithm engine may process the received data to recognize one of a pattern and a deviation to issue control commands pertaining to the machine. Lastly, the system may include one or more control modules disposed in operative communication with a control panel of the machine, wherein the control module is capable of receiving control commands over a communications network and executing the control commands.
In an exemplary embodiment, the machine learning algorithm engine may raise an alarm when one of a filter is clogged and deficient oil is detected, wherein the deficient oil may be one of a low oil level and an overused oil structure. The plurality of machine wearable sensors may include motor sensors and blower sensors. The machine learning algorithm engine associated with the IoT based system may issue commands based on a learning outcome from the motor sensor data and the blower sensor data. The learning outcome may be dependent on recognition of one of a pattern and deviation by the machine learning algorithm engine.
In an exemplary embodiment, the machine learning algorithm engine may include three layers which may be used for predictive and preventive maintenance of vacuum pump.
The machine learning algorithm engine may deploy three layers of supervised machine learning for predictive and preventive maintenance. Layer one of the supervised machine learning may receive vibration data from motor and/or blower, the vibration data may be classified into vacuum state and vacuum break state. In one or more embodiments, the vacuum break state may be a state in which vacuum is released periodically.
In layer two, a motor vibration data from vacuum state may be classified to detect operating vacuum level such as −8 inch or −12 inches of mercury. Then depending on a safety range (e.g.: between −7 to −12 inches of mercury), an alarm may be raised and conveyed to the users via a mobile application.
In layer three, vacuum break data may be classified into clean filter category and clogged filter category using a supervised machine learning. If the clog filter category is detected then an alarm may be raised.
Blower temperature and blower vibration data may be used for classification of a bad and/or low oil level. Bad oil level may increase the friction and thereby raise the surface temp of a blower. The machine learning based classification includes an oblique and/or support vector machine. Support vector machines may be supervised learning models with associated learning algorithms that analyze data and recognize patterns. The supervised learning models may be used for classification and regression analysis.
Motor vibration data may not be affected by bad oil. However, blower vibration data may get affected by bad oil. Therefore motor vibration data may be indicative of a particular vacuum pressure level. By comparing the blower data for good and bad oil using supervised machine learning, operation with bad oil may be detected.
Pumps may run into failure very often due to abusive operation coupled with poor maintenance. Vacuum pumps may report one or more of temperature, vibration, pressure and sound. These data may be used by a platform to check against a baseline pump database and the platform offers early warning for pump failure and/or real time alarm for abusive operation. Similarly, a blower temperature along with vibration may also be tracked. From machine learning algorithms of data, the platform sends out early indication of clogging of safety filters and/or low oil level indication.
In an exemplary embodiment, a drying process with a check on health is available by tracking temperature and flow data at inlet, outlet and on a site glass of a dryer. A recorded database may be created for normal and/or baseline operation with a clean filter, By comparing with the baseline operation., a mobile application may indicate degradation of filters and drying process. The mobile application may also offer recommended operation for optimal temperature to save energy and may also act as a platform for dryer maintenance.
In one or more embodiments, a machine learning architecture may be associated with a machine learning algorithm where normal states of the vacuum pumps with operational range, clean filer and clean oil may be learned with a baseline reading. Further, anomalous readings from one of a clogged filter, a bad operation, a bad oil, a low oil level and an over filled oil level are also recorded. The baseline reading and the anomalous readings may be used as a training database for the machine learning algorithm.
In one or more embodiments, data from multiple vacuum pumps associated with machine wearable sensors may also be acquired. A mobile or web or desktop application may act as a mobile middleware to scale the machine learning architecture to a single data collection unit. The single data collection unit may be one of a mobile device and a wireless device.
In one or more embodiments, the machine learning may be used on a transformed vibrational data based on PCA (Principal component analysis) transformation of X, Y and Z axis components of the vibrational data to transpose an acceleration into reference frame of the rotor of the vacuum pump.
Machine learning of the vibrational data may comprise a transfer of vibrational energy from one axis of rotation to other axis in order to determine the extent of oldness of the oil used in the blower bearings for smooth rotation. Machine learning of the vibrational data may also comprise information related to instability and wobbling of rigid rotational axis which aids in determining an extent of oldness of oil used in bearings of the blower.
In one or more embodiments, a predictive and preventive maintenance system for a vacuum pump may include one or more machine wearable sensors associated with the vacuum pump, a tracking module associated with a computing device, a machine learning module associated with a database and a communications network. A changing condition of vacuum pump may be tracked through the tracking module over the communications network. The tracking module may receive one of a temperature, a vibration and a sound data from the one or more machine wearable sensors. The machine learning module associated with the tracking module may identify a pattern from the temperature, the sound and the vibration data and may raise an alarm based on an analysis of the pattern.
In one or more embodiments, a wearable sensor may be one of a MEMS or a single silicon sensor.
Although the present embodiments have been described with reference to specific example embodiments, it will be evident that various modifications and changes may be made to these embodiments without departing from the broader spirit and scope of the various embodiments. For example, the various devices and modules described herein may be enabled and operated using hardware circuitry, firmware, software or any combination of hardware, firmware, and software (e.g., embodied in a machine readable medium). For example, the various electrical structure and methods may be embodied using transistors, logic gates, and electrical circuits (e.g., application specific integrated (ASIC) circuitry and/or in Digital Signal Processor (DSP) circuitry).
In addition, it will be appreciated that the various operations, processes, and methods disclosed herein may be embodied in a machine-readable medium and/or a machine accessible medium compatible with a data processing system (e.g., a computer devices), and may be performed in any order (e.g., including using means for achieving the various operations). The medium may be, for example, a memory, a transportable medium such as a CD, a DVD, a Blu-ray disc, a floppy disk, or a diskette. A computer program embodying the aspects of the exemplary embodiments may be loaded onto the retail portal. The computer program is not limited to specific embodiments discussed above, and may, for example, be implemented in an operating system, an application program, a foreground or background process, a driver, a network stack or any combination thereof. The computer program may be executed on a single computer processor or multiple computer processors.
Accordingly, the specification and drawings are to be regarded in an illustrative rather than a restrictive sense.
This patent application is a 35 USC 120 continuation of co-pending U.S. patent application Ser. No. 14/628,322, filed 23 Feb. 2015, published as United States patent publication 2016/0245279 on 25 Aug. 2016, with the inventors named as Biplab Pal, Steve Gillmeister, and Amit Purohit, and further filed with those inventors named as the Applicants. This patent application claims the benefit of the priority of the '322 application under 35 USC 120.
Number | Name | Date | Kind |
---|---|---|---|
4023940 | Shultz | May 1977 | A |
4131011 | Ling | Dec 1978 | A |
5150289 | Badavas | Sep 1992 | A |
5487225 | Downie | Jan 1996 | A |
5610339 | Haseley et al. | Mar 1997 | A |
5825338 | Salmon et al. | Oct 1998 | A |
5995561 | Yamasaki et al. | Nov 1999 | A |
6104987 | Farnsworth | Aug 2000 | A |
6289606 | Gillette et al. | Sep 2001 | B2 |
6330525 | Hays | Dec 2001 | B1 |
6405108 | Patel et al. | Jun 2002 | B1 |
7406399 | Furem et al. | Jul 2008 | B2 |
7882394 | Hosek et al. | Feb 2011 | B2 |
7938935 | MacHattie et al. | May 2011 | B2 |
8021462 | Moretto | Sep 2011 | B2 |
8094034 | Patel et al. | Jan 2012 | B2 |
8112381 | Yuan et al. | Feb 2012 | B2 |
8126574 | Discenzo et al. | Feb 2012 | B2 |
8150340 | Albsmeier et al. | Apr 2012 | B2 |
8334784 | Patel et al. | Dec 2012 | B2 |
8390299 | Laepple et al. | Mar 2013 | B2 |
8405940 | Schweitzer, III et al. | Mar 2013 | B2 |
8421475 | Thiim | Apr 2013 | B2 |
8433443 | Hagerty et al. | Apr 2013 | B2 |
8560368 | Maity et al. | Oct 2013 | B1 |
8571904 | Guru et al. | Oct 2013 | B2 |
8726535 | Garrido et al. | May 2014 | B2 |
8868242 | Loutfi | Oct 2014 | B2 |
8920078 | Woolever | Dec 2014 | B2 |
9052216 | Kamel et al. | Jun 2015 | B2 |
9062536 | Fischer | Jun 2015 | B2 |
9250275 | Patel et al. | Feb 2016 | B2 |
9781243 | Huang | Oct 2017 | B1 |
10041844 | Brady | Aug 2018 | B1 |
20010038345 | Satoh et al. | Nov 2001 | A1 |
20020143421 | Wetzer | Oct 2002 | A1 |
20040102924 | Jarrell | May 2004 | A1 |
20040176926 | Edie | Sep 2004 | A1 |
20040199573 | Schwarz et al. | Oct 2004 | A1 |
20050049834 | Bottomfield | Mar 2005 | A1 |
20050222794 | Baird et al. | Oct 2005 | A1 |
20060137105 | Hong et al. | Jun 2006 | A1 |
20060168195 | Maturana et al. | Jul 2006 | A1 |
20060208169 | Breed et al. | Sep 2006 | A1 |
20060276949 | Beck et al. | Dec 2006 | A1 |
20070100518 | Cooper | May 2007 | A1 |
20070185685 | Lannes et al. | Aug 2007 | A1 |
20070193056 | Switalski | Aug 2007 | A1 |
20080103732 | Stoupis et al. | May 2008 | A1 |
20080109185 | Cheung et al. | May 2008 | A1 |
20080289045 | Fryer | Nov 2008 | A1 |
20080294382 | Lim | Nov 2008 | A1 |
20090024359 | Bibelhausen et al. | Jan 2009 | A1 |
20090043518 | Roh et al. | Feb 2009 | A1 |
20090119243 | Yuan et al. | May 2009 | A1 |
20100023307 | Lee | Jan 2010 | A1 |
20100169030 | Parlos | Jul 2010 | A1 |
20100199352 | Hill et al. | Aug 2010 | A1 |
20100295692 | Bjorn | Nov 2010 | A1 |
20110016199 | De Carlo et al. | Jan 2011 | A1 |
20110131398 | Chaturvedi et al. | Jun 2011 | A1 |
20110137697 | Yedatore et al. | Jun 2011 | A1 |
20110216805 | Fernando et al. | Sep 2011 | A1 |
20110307220 | Lacaille | Dec 2011 | A1 |
20120045068 | Kim et al. | Feb 2012 | A1 |
20120166142 | Maeda et al. | Jun 2012 | A1 |
20120209569 | Becourt et al. | Aug 2012 | A1 |
20120213098 | Sun | Aug 2012 | A1 |
20120271576 | Kamel | Oct 2012 | A1 |
20120290104 | Holt et al. | Nov 2012 | A1 |
20120330499 | Scheid et al. | Dec 2012 | A1 |
20120330614 | Kar | Dec 2012 | A1 |
20130102284 | Storozuk | Apr 2013 | A1 |
20130119047 | Driussi | May 2013 | A1 |
20130170417 | Thomas et al. | Jul 2013 | A1 |
20130173178 | Poczka et al. | Jul 2013 | A1 |
20130201316 | Binder et al. | Aug 2013 | A1 |
20130268469 | Sharma et al. | Oct 2013 | A1 |
20130287060 | Langdoc et al. | Oct 2013 | A1 |
20130304677 | Gupta et al. | Nov 2013 | A1 |
20130318022 | Yadav et al. | Nov 2013 | A1 |
20140129164 | Gorbold | May 2014 | A1 |
20140132418 | Lill | May 2014 | A1 |
20140163416 | Shuck | Jun 2014 | A1 |
20140186215 | Shinta et al. | Jul 2014 | A1 |
20140207394 | Madden | Jul 2014 | A1 |
20140223767 | Arno | Aug 2014 | A1 |
20140244836 | Goel et al. | Aug 2014 | A1 |
20140262130 | Yenni | Sep 2014 | A1 |
20140309805 | Ricci | Oct 2014 | A1 |
20140314284 | Movellan et al. | Oct 2014 | A1 |
20140335480 | Asenjo et al. | Nov 2014 | A1 |
20140336791 | Asenjo et al. | Nov 2014 | A1 |
20140337429 | Asenjo et al. | Nov 2014 | A1 |
20150026044 | Refaeli | Jan 2015 | A1 |
20150039250 | Rank | Feb 2015 | A1 |
20150094914 | Abreu | Apr 2015 | A1 |
20150139817 | Kowalski | May 2015 | A1 |
20150181313 | Murphy | Jun 2015 | A1 |
20150185251 | Heydron et al. | Jul 2015 | A1 |
20150233792 | Gao | Aug 2015 | A1 |
20150233856 | Samuilov et al. | Aug 2015 | A1 |
20150247670 | Robertson et al. | Sep 2015 | A1 |
20150261215 | Blevins | Sep 2015 | A1 |
20160086285 | Jordan Peters et al. | Mar 2016 | A1 |
20160147205 | Kaufman | May 2016 | A1 |
20160189440 | Cattone | Jun 2016 | A1 |
20160209831 | Pal | Jul 2016 | A1 |
20160245279 | Pal et al. | Aug 2016 | A1 |
20160245686 | Pal et al. | Aug 2016 | A1 |
20160245765 | Pal | Aug 2016 | A1 |
20160291552 | Pal et al. | Oct 2016 | A1 |
20160299183 | Lee | Oct 2016 | A1 |
20160313216 | Pal et al. | Oct 2016 | A1 |
20160349305 | Pal | Dec 2016 | A1 |
20170006135 | Siebel | Jan 2017 | A1 |
20170032281 | Hsu | Feb 2017 | A1 |
20170060574 | Malladi et al. | Mar 2017 | A1 |
20170061608 | Kim et al. | Mar 2017 | A1 |
20170163444 | McLaughlin et al. | Jun 2017 | A1 |
20170201585 | Doraiswamy et al. | Jul 2017 | A1 |
Number | Date | Country |
---|---|---|
201672991 | Dec 2010 | CN |
102539911 | Jul 2012 | CN |
103399486 | Nov 2013 | CN |
203362223 | Dec 2013 | CN |
203588054 | May 2014 | CN |
104036614 | Sep 2014 | CN |
1836576 | Feb 2012 | EP |
2186613 | May 2013 | EP |
2648393 | Oct 2013 | EP |
WO 2005086760 | Sep 2005 | WO |
WO 2010104735 | Sep 2010 | WO |
WO 2013040855 | Mar 2013 | WO |
WO 2013-041440 | Mar 2013 | WO |
WO 2013093942 | Jun 2013 | WO |
WO 2014044906 | Mar 2014 | WO |
WO 2014085648 | Jun 2014 | WO |
WO 2014089567 | Jun 2014 | WO |
WO 2014117245 | Aug 2014 | WO |
WO 2015022036 | Feb 2015 | WO |
WO 2016137848 | Sep 2016 | WO |
WO 2017-1234525 | Jul 2017 | WO |
Entry |
---|
Vasudevan, Shobha, “Still a Fight to Get It Right: Verification in the Era of Machine Learning”, 2017 IEEE International Conference on Rebooting Computing (ICRC), Washington, DC, 2017, pp. 1-8. (Year: 2017). |
International Search Report and Written Opinion for PCT Application No. PCT/US16/18820; dated Aug. 4, 2016. |
International Search Report and Written Opinion for PCT Application No. PCT/US15/066547; dated Mar. 17, 2016. |
Sensors Drive Mobile IoT; Wong, William; Jan. 26, 2015; Electronic Design. |
International Search Report and Written Opinion for PCT Application No. PCT/US16/028724; dated Aug. 22, 2016. |
International Search Report and Written Opinion for PCT Application No. PCT/US16/18831; dated Aug. 12, 2016. |
Fault Detection in Kerman Combined Cycle Power Plant Boilers by Means of Support Vector Machine Classifier Algorithms and PCA by M. Berahman, et al., 3rd International Conference on Control, Instrumentation, and Automation (ICCIA 2013), Dec. 28-30, 2013, Tehran, Iran. |
Fault Monitoring and Diagnosis of Induction Machines Based on Harmonic Wavelet Transform and Wavelet neural Network by Qianjin Guo, et al., dated Sep. 2008, published at the Fourth International Conference on Natural Computation. |
Fault Diagnosis Method Study in Roller Bearing Based on Wavelet Transform and Stacked Auto-encoder, by Junbo Tan, et al., dated Feb. 2015, published by IEEE. |
A Diagnostic Expert System Embedded in a Portable Vibration Analysis Instrument by Dr. Robert Milne, et al., dated May 13, 1991, published at IEE Colloquium on Intelligent Instrumentation. |
Detection of Precursor Wear Debris in Lubrication Systems by Jack Edmonds, et al., dated May 2000, published by IEEE. |
Fault Diagnosis of Bearing Based on Fuzzy Support Vector Machine, by Haodong Ma, et al., dated Jan. 2015, published by IEEE. |
Investigation of the Mechanical Faults Classification using Support Vector Machine Approach by Zhiqiang Jiang, et al., dated Aug. 2010, 2010 Second International Conference on Intelligent Human-Machine Systems and Cybernetics. |
Impact Characterization of Multiple-Points-Defect on Machine Fault Diagnosis by Muhammad F. Yaqub, et al., 8th IEEE International Conference on Automation Science and Engineering, Aug. 20-24, 2012, Seoul, Korea. |
Detection of Generalized-Roughness Bearing Fault by Spectral-Kurtosis Energy of Vibration or Current Signals by Fabio Immovilli, et al., IEEE Transations on Industrial Electronics, vol. 56, No. 11, Nov. 2009. |
Intrinsic Mode Function Determination of Faulty Rolling Element Bearing Based on Kurtosis by Wei Kang, et al., Proceeding of the 2015 IEEE International Conference on Information and Automation, Lijiang, China, Aug. 2015. |
Condition Monitoring and Fault Diagnosis of Rolling Element Bearings Based on Wavelet Energy Entropy and SOM by Shuai Shi, et al., dated Aug. 2012, published by IEEE. |
Continuous Hidden Markov Model Based Gear Fault Diagnosis and Incipient Fault Detection by Jian-She Kang, et al., dated Jun. 2011, published by Institute of Electrical and Electronics Engineers (IEEE). |
Study on Fault Diagnosis of Gear with Spall using Ferrography and Vibration Analysis by Wei Feng, et al., published in Aug. 2009 at the International Conference on Measuring Technology and Mechatronics Automation. |
International Search Report and Written Opinion for PCT Application No. PCT/US2016/067814; dated Apr. 6, 2017. |
International Search Report and Written Opinion for PCT Application No. PCT/US2016/067546; dated Apr. 11, 2017. |
Krishnamurthy, S. et al. (2008) Automation of Facility Management Processes Using Machine-to-Machine Technologies. In: Floerkemeier C., Langheinrich M., Fleisch E., Mattern F., Sarma S.E. (eds) The Internet of Things. Lecture Notes in Computer Science, vol. 4952. DOI:10.1007/978-3-540-78731-0_5 (Year: 2008). |
Holler, J. et al. (2014). “From Machine-to-machine to the Internet of Things: Introduction to a New Age of Intelligence.” Chapters 2, 4, 5, 7, 10, 12. Academic Press. DOI:10.1016/B978-0-12-407684-6.00002-4 (Year: 2014). |
Azure IoT Edge open for developers to build for the intelligent edge, George, Sam; Azure Internet of Things; Nov. 15, 2017. |
Predix Edge Technology Product Brief, General Electric, 2017. |
http://ieeexplore.ieee.org/document/8089336/ Future Edge Cloud and Edge Computing for Internet of Things Applications—Janali Pan et al. |
Challenges and Solutions of Protecting Variable Speed Drive Motors; Aversa, et al.; Feb. 11, 2013; Presented at the 2013 Texas A&M Conference for Protective Relay Engineers. |
Number | Date | Country | |
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20190154032 A1 | May 2019 | US |
Number | Date | Country | |
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Parent | 14628322 | Feb 2015 | US |
Child | 16253462 | US |