Non-invasive human body thermal comfort AI sensing method

A non-invasive, thermal comfort technology, applied in the fields of machine learning, building physics, and computer vision, can solve the problems that users cannot know the temperature and cannot control it, and achieve the elimination of restricted human activities, good operability, and reduced complexity Effect

Active Publication Date: 2019-06-07
NANJING UNIV OF POSTS & TELECOMM
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  • Summary
  • Abstract
  • Description
  • Claims
  • Application Information

AI Technical Summary

Problems solved by technology

This method can reflect the user's thermal comfort feeling, but has obvious disadvantages
On the one hand, the temperature control has a strong hysteresis; on the other hand, it needs continuous interve

Method used

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  • Non-invasive human body thermal comfort AI sensing method
  • Non-invasive human body thermal comfort AI sensing method

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Embodiment Construction

[0039] The shortcomings of the existing technology on human thermal comfort detection methods and the obvious application experience of HAVC system control fixation or manual participation are inspected. Relying on the development of computer vision and machine learning, the inventor is committed to adding "tactile and visual" capabilities to heating and cooling systems, real-time perception of human comfort, and thus providing real-time and effective feedback signals to participate in the automatic operation of thermostats. On the basis of massive data, it continuously learns user behavior habits and realizes the prediction function, so as to achieve adjustment in advance, meet the thermal comfort needs of users as much as possible, and finally realize people-oriented in the true sense.

[0040] For this reason, the present invention develops a brand new branch, and innovatively proposes a non-invasive AI perception method for human body thermal comfort. The technical implemen...

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Abstract

The invention discloses a non-invasive human body thermal comfort AI sensing method. The method includes the following steps of: acquiring and preprocessing data; defining and extracting skin sensitivity indexes; constructing a deep learning network for non-invasive skin sensing thermal comfort; and performing training to generate a network model. According to the method, the image data of human body skin are acquired through computer vision, and after the data are processed, an address mapping table between region-of-interest images and skin temperatures is constructed; and skin sensitivity differences between different human bodies for external heat and cold stimuli are adopted as weight coefficients, feature extraction is performed on the address mapping table and the SSIs (Skin Sensitivity Index), and feature fusion is performed, training is further performed, obtained network models are saved, and optimization is performed, so that a final network model is obtained for skin temperature prediction. With the AI sensing method of the invention adopted, three major challenges, namely, the micro skin changes, inter-individual differences and intra-individual time variability in human body thermal comfort detection can be overcome; and energy optimization, energy conservation and environmental protection can be realized. The method has high operability.

Description

technical field [0001] The invention belongs to the fields of computer vision, machine learning and building physics, and in particular relates to a non-invasive human body thermal comfort detection method for intelligent buildings or intelligent automatic driving. Background technique [0002] According to the annual statistical report, 21% of the world's annual energy consumption comes from commercial and residential buildings. In some countries and regions with relatively rapid urbanization, energy consumption is increasing at a rate of 32% per year. In building energy consumption, 50% comes from heating, ventilation and air conditioning system (HVAC, hereinafter collectively referred to as central air conditioning system). If it is possible to detect the thermal comfort level of the human body in real time, adjust indoor parameters (temperature, humidity, airflow, etc.) in a targeted manner, or perform local heating / cooling, it can meet the needs of individual thermal co...

Claims

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Application Information

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IPC IPC(8): G05D27/02G01K13/00G06K9/62G06N3/08
CPCG06N3/08G01K13/00G05D27/02G06F18/00
Inventor 成孝刚宋丽敏钱俊鹏任俊弛李海波
Owner NANJING UNIV OF POSTS & TELECOMM
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