“Core” helps double carbon “smart” build the future - “EcoTrash”, an Internet of Things ecological protection device based on the master chip STM32
Abstract
product. EcoTrash uses embedded hardware for human-machine interaction and environmental monitoring, including temperature, humidity
and pollution levels. The data is transferred to the database through the cloud, and then transmitted to the visual analysis platform for data
analysis. The six parts include power supply module, main control circuit, wechat mini program, visualization platform, visual identification
module and environmental monitoring and purification system. The main working process is that the power supply module provides power to the main control chip, connects the small program through the ESP8266-WIFI module, and uses the visual recognition module of the
EcoTrash device to input garbage information and transmit it to the big data platform. Through this system analysis of the local environment,
we are committed to promoting carbon neutral development, contributing to the realization of the “dual carbon” goal and promoting green
and low-carbon transition development.
Keywords
Full Text:
PDFReferences
[1]Dongfa F ,Yan S ,Xuanli X , et al.Digital economy and carbon emission reduction: evidence from China[J].China Economic Jour_x005fnal,2023,16(3):272-301.
[2]Ur S R ,Muhammad U ,Younus H M T , et al.Advancing structural health monitoring: A vibration-based IoT approach for remote
real-time systems[J].Sensors and Actuators: A. Physical,2024,365114863-.
[3]Zhang L ,Chen H .Design of Environmental Monitoring System for Livestock Transport Carriage Based on STM32 and ZigBee[J].
International Journal of Frontiers in Engineering Technology,2023,5(10):
[4]Shibin H ,Yiyong L ,Zhang Q , et al.Research on the Architecture of Cloud Host Autonomous Backup System in a Cloud Data
Center[J].Journal of Physics: Conference Series,2021,2030(1):
[5]Yifan B ,Junzhen Y ,Shuqin Y , et al.An improved YOLO algorithm for detecting flowers and fruits on strawberry seedlings[J].Biosystems Engineering,2024,2371-12.
[6] Fangfang. Research on power load forecasting based on Improved BP neural network [D]. Harbin Institute of Technology, 2021.
DOI: https://doi.org/10.18686/mcs.v5i6.2193
Refbacks
- There are currently no refbacks.