Method, mobile terminal and non-transitory computer-readable storage medium for adjusting scanning frequency of touch screen
US-2019034022-A1 · Jan 31, 2019 · US
US11443571B2 · US · B2
| Field | Value |
|---|---|
| Publication number | US-11443571-B2 |
| Application number | US-201817257431-A |
| Country | US |
| Kind code | B2 |
| Filing date | Dec 20, 2018 |
| Priority date | Jul 25, 2018 |
| Publication date | Sep 13, 2022 |
| Grant date | Sep 13, 2022 |
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The present disclosure relates to a monitoring frequency setting method and device. The method includes that: a usage log of a controlled device is acquired; and a monitoring frequency of the controlled device is adjusted according to the usage log.
Opening claim text (preview).
What is claimed is: 1. A monitoring frequency setting method, comprising: acquiring a usage log of a controlled device; and adjusting a monitoring frequency of the controlled device according to the usage log; wherein adjusting the monitoring frequency of the controlled device according to the usage log comprises: counting a usage counter of the controlled device in each of different time periods according to the usage log; determining the monitoring frequency of each different time periods according to the usage counter in the corresponding time period. 2. The monitoring frequency setting method as claimed in claim 1 , wherein the monitoring frequency is positively correlated with the usage counter. 3. The monitoring frequency setting method as claimed in claim 2 , wherein determining the monitoring frequency of each of different time periods according to the usage counter in the corresponding time period comprises: determining a weight of each of different time periods according to the usage counter in the corresponding time period; determining the monitoring frequency of each of different time periods according to the weight, wherein the weight is positively correlated with the usage counter. 4. The monitoring frequency setting method as claimed in claim 3 , wherein determining the weight of in each of different time periods according to the usage counter in the corresponding time period comprises: dividing the usage counter in each of different time periods by a time length in the corresponding time period to calculate a usage frequency in the corresponding time period; and determining the usage frequency as the weight in the corresponding time period. 5. The monitoring frequency setting method as claimed in claim 3 , wherein determining the monitoring frequency of each of different time periods according to the weight comprises: reading a preset mapping relationship table, the mapping relationship table recording a corresponding relationship between the weight and the monitoring frequency; and determining the monitoring frequency of each of different time periods according to the mapping relationship table. 6. The monitoring frequency setting method as claimed in claim 4 , further comprising: after a preset first period, redetermining the weight of each of different time periods in a current first period according to an acquired usage log in a previous first period. 7. The monitoring frequency setting method as claimed in claim 6 , wherein redetermining the weight of each of different time periods in the current period comprises: iteratively updating the weight of each of different time periods in the previous first period by a neural network model to obtain the weight of each of different time periods in the current first period, wherein the neural network model is a perception model. 8. The monitoring frequency setting method as claimed claim 1 , wherein acquiring the usage log of the controlled device comprises: receiving a usage log data packet sent by the controlled device, the data packet recording a usage time period of the controlled device. 9. The monitoring frequency setting method as claimed in claim 8 , wherein receiving the usage log data packet sent by the controlled device comprises: receiving the usage log data packet sent by the controlled device in each time when the controlled device is used, the data packet comprising a current usage time period; or receiving the usage log data packet sent by the controlled device at a preset second period, the data packet comprising each usage time period in a current second period. 10. The monitoring frequency setting method as claimed in claim 1 , wherein adjusting the monitoring frequency of the controlled device according to the usage log comprises: when the usage log is a usage log under a plurality of usage categories, adjusting the monitoring frequency of each of the plurality of the usage categories of the controlled device according to the usage log under each of the plurality of the usage categories. 11. The monitoring frequency setting method as claimed in claim 10 , wherein the plurality of usage categories comprise working day and non-working day. 12. A monitoring frequency setting method, comprising: receiving a monitoring frequency sent by a control terminal, the monitoring frequency being determined by the control terminal according to a usage log of a controlled device; and operating according to the monitoring frequency; wherein the control terminal is configured to count a usage counter of the controlled device in each of different time periods according to the usage log, and determine the monitoring frequency of each of different time periods according to the usage counter in the corresponding time period. 13. The monitoring frequency setting method as claimed in claim 12 , further comprising: sending the usage log of the controlled device to the control terminal. 14. An intelligent device, comprising: a controlled device, which at least comprises the following modules: a receiving component, configured to receive a monitoring frequency sent by a control terminal, the monitoring frequency being determined by the control terminal according to a usage log of the controlled device; and an execution component, configured to operate according to the monitoring frequency; wherein the control terminal is configured to count a usage counter of the controlled device in each of different time periods according to the usage log, and determine the monitoring frequency of each of different time periods according to the usage counter in the corresponding time period. 15. The intelligent device as claimed in claim 14 , wherein the device is an intelligent lock. 16. The monitoring frequency setting method as claimed in claim 1 , further comprising: sending the monitoring frequency to the controlled device, as to indicate the controlled device to operate according to the monitoring frequency. 17. The monitoring frequency setting method as claimed in claim 5 , further comprising: after a preset first period, redetermining the weight of each of different time periods in the current first period according to the acquired usage log in the previous first period. 18. The monitoring frequency setting method as claimed in claim 6 , further comprising: after a preset first period, redetermining the weight of each of different time periods in the current first period according to the acquired usage log in the previous first period. 19. The monitoring frequency setting method as claimed in claim 1 , wherein acquiring the usage log of the controlled device comprises: receiving a usage log data packet sent by the controlled device, the data packet recording the usage time period of the controlled device.
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