Determining alert criteria in a network environment
US-9529655-B2 · Dec 27, 2016 · US
US9792795B2 · US · B2
| Field | Value |
|---|---|
| Publication number | US-9792795-B2 |
| Application number | US-201615228930-A |
| Country | US |
| Kind code | B2 |
| Filing date | Aug 4, 2016 |
| Priority date | Jan 23, 2014 |
| Publication date | Oct 17, 2017 |
| Grant date | Oct 17, 2017 |
A practical reading order for non-experts. Skip the full description unless you need deep technical detail.
What the patent document calls the invention.
A short plain-language summary of the technical disclosure.
Who owns or filed the patent and who is credited as inventor.
Filing, priority, publication, and grant dates set the timeline.
The legal scope of protection — read this for what is actually claimed.
Technology tags used to group this patent with similar filings.
Prior art links and similar publications in this corpus.
Official abstract text for this publication.
Various apparatus and methods for smoke detection are disclosed. In one embodiment, a method of training a classifier for a smoke detector comprises inputting sensor data from a plurality of tests into a processor. The sensor data is processed to generate derived signal data corresponding to the test data for respective tests. The derived signal data is assigned into categories comprising at least one fire group and at least one non-fire group. Linear discriminant analysis (LDA) training is performed by the processor. The derived signal data and the assigned categories for the derived signal data are inputs to the LDA training. The output of the LDA training is stored in a computer readable medium, such as in a smoke detector that uses LDA to determine, based on the training, whether present conditions indicate the existence of a fire.
Opening claim text (preview).
We claim: 1. A smoke detector, comprising: a computer readable medium including linear discriminant analysis (LDA) training output data generated by: inputting sensor data from a plurality of tests, the sensor data indicative of environmental conditions during the respective tests; calculating a baseline moving average for sensor data of the respective tests; generating derived signal data using the sensor data and the baseline moving average for the sensor data of the respective tests; assigning at least one group to the derived signal data for the respective tests, the at least one group selected from a plurality of groups, each group of the plurality of groups associated with a hazardous condition or a non-hazardous condition; and performing LDA training using the derived signal data and the assigned at least one group for the respective tests as input to the LDA training, the output of the LDA training generating a plurality of transformation coefficients for transforming derived signal data into linear discriminant (LD) coordinates, a mean of group means, and a plurality of centroids in linear discriminant coordinates, wherein the plurality of centroids includes a different centroid for each group of the plurality of groups; at least one sensor configured to observe present environmental conditions, the at least one sensor comprising an aerosol sensor; a processor operatively connected to the computer readable memory and the at least one sensor, the processor configured to: process data from the at least one sensor to provide data in a plurality of data channels indicative of the present environmental conditions; map the data from the plurality of data channels into linear discriminant space using the plurality of transformation coefficients stored in the computer readable medium; classify the present environmental conditions as belonging to one group of the plurality of groups based on the linear discriminant mapping of the data from the plurality of data channels; and signal an alarm condition if the present environmental conditions are classified as belonging to a group associated with a hazardous condition; and an alarm operatively connected to the processor, the alarm generating an audible alert, a visual alert, or a combination thereof in response to the alarm signal. 2. The smoke detector of claim 1 , wherein generating derived signal data using the sensor data and the baseline moving average for the sensor data of the respective tests comprises determining a difference between the sensor data and the moving average of the sensor data. 3. The smoke detector of claim 1 , wherein the classification of the present environmental conditions as belonging to one group of the plurality of groups is based on the linear discriminant mapping of the plurality of data channels being outside a threshold in linear discriminant coordinates. 4. The smoke detector of claim 1 , wherein processing data from the at least one sensor to provide data in a plurality of data channels indicative of the present environmental conditions comprises determining a difference between the sensor data and a moving average of the sensor data. 5. The smoke detector of claim 1 , wherein the processor is further configured to be set into a sleep mode between reading cycles of the at least one sensor. 6. The smoke detector of claim 5 , wherein an amplifier of the at least one sensor is switched off during the sleep mode. 7. The smoke detector of claim 5 , wherein the at least one sensor comprises a carbon monoxide sensor and an amplifier of the carbon monoxide sensor is switched off during the sleep mode. 8. The smoke detector of claim 5 , wherein a time period of the sleep mode is between three and ten seconds. 9. A method of training a classifier for a smoke detector, comprising: inputting sensor data from a plurality of tests into a processor, the sensor data indicative of environmental conditions during the tests; calculating a baseline moving average for sensor data of the respective tests; generating derived signal data using the sensor data and the baseline moving average for the sensor data of the respective tests; assigning the derived signal data into categories comprising at least one fire group and at least one non-fire group; performing linear discriminant analysis (LDA) training using the processor and the derived signal data and the assigned categories for the derived signal data as input to the LDA training, the output of the LDA training generating a centroid in linear discriminant coordinates for each of the categories, a plurality of coefficients for transforming derived signal data into linear discriminant (LD) coordinates, and a mean of group means; and storing the plurality of coefficients, the plurality of centroids, and the mean of group means in a computer readable medium. 10. The method of claim 9 , wherein generating derived signal data using the sensor data and the baseline moving average for the sensor data of the respective tests comprises determining a difference between the sensor data and the moving average of the sensor data. 11. The method of claim 10 , wherein generating derived signal data using the sensor data and the baseline moving average for the sensor data of the respective tests comprises multiplying the difference by a scaling factor. 12. The method of claim 9 , wherein the categories comprise plural fire groups, the fire groups including a flaming fire group and a non-flaming fire group. 13. The method of claim 12 , wherein the at least one non-fire group comprises a normal group and a nuisance non-fire indicating group. 14. The method of claim 9 , further comprising: tuning sensor data for detecting fires in a kitchen by removing any sensor data from grease-fire tests. 15. A smoke detector, comprising: a computer readable medium including linear discriminant analysis (LDA) training output data generated by: inputting sensor data from a plurality of tests, the sensor data indicative of environmental conditions during the respective tests; processing the sensor data to generate derived signal data for the respective tests; assigning at least one group to the derived signal data for the respective tests, the at least one group selected from a plurality of groups, each group of the plurality of groups associated with a hazardous condition or a non-hazardous condition; and performing LDA training using the derived signal data and the assigned at least one group for the respective tests as input to the LDA training, the output of the LDA training generating a plurality of transformation coefficients for transforming derived signal data into linear discriminant (LD) coordinates, a mean of group means, and a plurality of centroids in linear discriminant coordinates, wherein the plurality of centroids includes a different centroid for each group of the plurality of groups; at least one sensor configured to observe present environmental conditions, the at least one sensor comprising an aerosol sensor; a processor operatively connected to the computer readable memory and the at least one sensor, the processor configured to: process data from the at least one sensor to provide data in a plurality of data channels indicative of the present environmental conditions; map the data from the plurality of data channels into linear discriminant space using the plurality of transformation coefficients stored in the computer readable medium; classify the present environmental conditions as belonging to one group of the plurality of groups based on the linear discriminant mapping of the dat
Calibration, including self-calibrating arrangements · CPC title
Actuation by presence of smoke or gases {, e.g. automatic alarm devices for analysing flowing fluid materials by the use of optical means} · CPC title
using electric transmission; using electromagnetic transmission · CPC title
Data fusion; cooperative systems, e.g. voting among different detectors · CPC title
by using a detection device for specific gases, e.g. combustion products, produced by the fire (G08B17/103, G08B17/11 take precedence) · CPC title
Related publications grouped by family.
Answers are generated from the same data shown on this page.