A Machine-Learning-Enhanced Simultaneous and Multimodal Sensor Based on Moist-Electric Powered Graphene Oxide.
Ce YangHaiyan WangJiawei YangHouze YaoTiancheng HeJiaxin BaiTianlei GuangHuhu ChengJianfeng YanLiang-Ti QuPublished in: Advanced materials (Deerfield Beach, Fla.) (2022)
Simultaneous multimodal monitoring can greatly perceive intricately multiple stimuli, which is important for the understanding and development of a future human-machine fusion world. However, the integrated multisensor networks with cumbersome structure, huge power consumption, and complex preparation process have heavily restricted practical applications. Herein, a graphene oxide single-component multimodal sensor (GO-MS) is developed, which enables simultaneous monitoring of multiple environmental stimuli by a single unit with unique moist-electric self-power supply. This GO-MS can generate a sustainable moist-electric potential by spontaneously adsorbing water molecules in air, which has a characteristic response behavior when exposed to different stimuli. As a result, the simultaneous monitoring and decoupling of the changes of temperature, humidity, pressure, and light intensity are achieved by this single GO-MS with machine-learning (ML) assistance. Of practical importance, a moist-electric-powered human-machine interaction wristband based on GO-MS is constructed to monitor pulse signals, body temperature, and sweating in a multidimensional manner, as well as gestures and sign language commanding communication. This ML-empowered moist-electric GO-MS provides a new platform for the development of self-powered single-component multimodal sensors, showing great potential for applications in the fields of health detection, artificial electronic skin, and the Internet-of-Things.
Keyphrases
- mass spectrometry
- machine learning
- multiple sclerosis
- ms ms
- endothelial cells
- pain management
- deep learning
- human health
- healthcare
- public health
- blood pressure
- artificial intelligence
- autism spectrum disorder
- mental health
- high resolution
- pluripotent stem cells
- risk assessment
- high intensity
- climate change
- health promotion