Power-Efficient Design and Implementation of an IoT Data Acquisition Terminal
Keywords:
Internet of Things, Low power, Electronic information acquisition, STM32, NB-IoTAbstract
With the rapid development of Internet of Things (IoT) technology, a large number of devices need to access the network for data exchange. As a key front-end device in IoT, the low-power electronic information acquisition terminal is of great significance for the widespread application of IoT. This paper presents a detailed design and implementation scheme for a low-power electronic information acquisition terminal oriented toward IoT. Through appropriate hardware selection, optimized circuit design, and efficient software algorithms, the terminal’s power consumption is effectively reduced and the efficiency of data acquisition and transmission is improved. The terminal demonstrates excellent performance in practical applications and meets the low-power and long-endurance requirements of IoT scenarios.
References
Zhang, T. (2025). Research and Application of Blockchain-Based Medical Data Security Sharing Technology. Artificial Intelligence Technology Research, 2(9).
Yu, Z. (2025). Advanced Applications of Python in Market Trend Analysis Research. MODERN ECONOMICS, 6(1), 115.
Liu, Huanyu. "Research on Digital Marketing Strategy Optimization Based on 4P Theory and Its Empirical Analysis."
Ren, Fei, Chao Ren, and Tianyi Lyu. "Iot-based 3d pose estimation and motion optimization for athletes: Application of c3d and openpose." Alexandria Engineering Journal 115 (2025): 210-221.
Zhou, Y., Wang, Z., Zheng, S., Zhou, L., Dai, L., Luo, H., ... & Sui, M. (2024). Optimization of automated garbage recognition model based on resnet-50 and weakly supervised cnn for sustainable urban development. Alexandria Engineering Journal, 108, 415-427.
Jin, Can, et al. "Rankflow: A multi-role collaborative reranking workflow utilizing large language models." Companion Proceedings of the ACM on Web Conference 2025. 2025.
Xie, Xi, et al. "RTop-K: Ultra-Fast Row-Wise Top-K Selection for Neural Network Acceleration on GPUs." The Thirteenth International Conference on Learning Representations. 2024.
Xu, Zhongjin. "Machine Learning-Enhanced Fingertip Tactile Sensing: From Contact Estimation to Reconstruction." Journal of Intelligence Technology and Innovation (JITI) 3.2 (2025): 20-39.
Wei, Xiangang, et al. "AI driven intelligent health management systems in telemedicine: An applied research study." Journal of Computer Science and Frontier Technologies 1.2 (2025): 78-86.
Zhang, Shiwen, et al. "Optimizing the Operation Mechanism of Public Data Assets and Data-Driven Decision Models in the Digital Economy With Deep Neural Networks." Journal of Organizational and End User Computing (JOEUC) 37.1 (2025): 1-22.
Shao, F., Wang, K., & Liu, Y. (2023). Salient object detection algorithm based on diversity features and global guidance information. Innovation & Technology Advances, 1(1), 12–20. https://doi.org/10.61187/ita.v1i1.14
Gong, Z., Zhang, H., Yang, H., Liu, F., & Luo, F. (2023). A Review of Neural Network Lightweighting Techniques. Innovation & Technology Advances, 1(2), 1–24. https://doi.org/10.61187/ita.v1i2.36
Sun, N., Yu, Z., Jiang, N., & Wang, Y. (2025). Construction of Automated Machine Learning (AutoML) Framework Based on Large LanguageModels.
Pal, P. et al. 2025. AI-Based Credit Risk Assessment and Intelligent Matching Mechanism in Supply Chain Finance. Journal of Theory and Practice in Economics and Management. 2, 3 (May 2025), 1–9.
Gao, W.; Tayal, D., Gorinevsky, D.: Probabilistic planning of minigrid with renewables and storage in Western Australia. In: 2019 IEEE Power & Energy Society General Meeting (PESGM) (2019). https://doi.org/10.1109/pesgm40551.2019.8973483
W. Gao and D. Gorinevsky, “Probabilistic balancing of grid with renewables and storage,” International Conference on Probabilistic Methods Applied to Power Systems (PMAPS), 2018.
Zhang, Yupeng, and Alan Needleman. "On the identification of power-law creep parameters from conical indentation." Proceedings of the Royal Society A 477.2252 (2021): 20210233.
Chen, Yinda, et al. "Generative text-guided 3d vision-language pretraining for unified medical image segmentation." arXiv preprint arXiv:2306.04811 (2023).
Zhang, Yupeng, and Alan Needleman. "Characterization of plastically compressible solids via spherical indentation." Journal of the Mechanics and Physics of Solids 148 (2021): 104283.
Li, Huaxu, et al. "Enhancing Intelligent Recruitment With Generative Pretrained Transformer and Hierarchical Graph Neural Networks: Optimizing Resume-Job Matching With Deep Learning and Graph-Based Modeling." Journal of Organizational and End User Computing (JOEUC) 37.1 (2025): 1-24.
Su, Tian, et al. "Anomaly Detection and Risk Early Warning System for Financial Time Series Based on the WaveLST-Trans Model." (2025).
Zhang, Yujun, et al. "MamNet: A Novel Hybrid Model for Time-Series Forecasting and Frequency Pattern Analysis in Network Traffic." arXiv preprint arXiv:2507.00304 (2025).
Zhang, Zongzhen, Qianwei Li, and Runlong Li. "Leveraging Deep Learning for Carbon Market Price Forecasting and Risk Evaluation in Green Finance Under Climate Change." Journal of Organizational and End User Computing (JOEUC) 37.1 (2025): 1-27.
Peng, Qucheng, Ce Zheng, Zhengming Ding, Pu Wang, and Chen Chen. "Exploiting Aggregation and Segregation of Representations for Domain Adaptive Human Pose Estimation." In 2025 IEEE 19th International Conference on Automatic Face and Gesture Recognition (FG), pp. 1-10. IEEE, 2025.
Chen, Yilong, et al. "Dha: Learning decoupled-head attention from transformer checkpoints via adaptive heads fusion." Advances in Neural Information Processing Systems 37 (2024): 45879-45913.
Q. Tian, D. Zou, Y. Han and X. Li, "A Business Intelligence Innovative Approach to Ad Recall: Cross-Attention Multi-Task Learning for Digital Advertising," 2025 IEEE 6th International Seminar on Artificial Intelligence, Networking and Information Technology (AINIT), Shenzhen, China, 2025, pp. 1249-1253, doi: 10.1109/AINIT65432.2025.11035473.
Tang, H., Yu, Z., & Liu, H. (2025). Supply Chain Coordination with Dynamic Pricing Advertising and Consumer Welfare An Economic Application. Journal of Industrial Engineering and Applied Science, 3(5), 1–6.
Guo, Y. (2025, May). IMUs Based Real-Time Data Completion for Motion Recognition With LSTM. In Forum on Research and Innovation Management (Vol. 3, No. 6).
Zhou, Z. (2025). Research on Software Performance Monitoring and Optimization Strategies in Microservices Architecture. Artificial Intelligence Technology Research, 2(9).
Downloads
Published
How to Cite
Issue
Section
License
Copyright (c) 2025 Chen Peng

This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.
