Pradanya A. Gajbhiye, Satya P. Singh, Madan K. Sharma
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引用次数: 0
Abstract
The growing adoption of wearable Internet of Things (IoT) devices requires efficient wireless communication systems for applications like healthcare and fitness. Multiple-input multiple-output (MIMO) technology improves signal quality by using multiple antennas but presents challenges in compactness and low power consumption and offers minimal mutual coupling while interacting with the human body. Ensuring compliance with specific absorption rate (SAR) limits is also crucial. In this paper, we present a hybrid optimization framework for designing MIMO antennas for such wearable devices. We integrate deep learning with Bayesian optimization. We use artificial neural networks (ANNs) to model antenna performance and Bayesian optimization to explore the design space efficiently. The final optimized MIMO antenna has an overall size of 122.44 mm \(\times \) 58.32 mm. The proposed MIMO antenna achieved minimized mutual coupling in free space, on hand, and leg with values of <\(-\)75.77 dB, <\(-\)46 dB, and <\(-\)37 dB, respectively. In every scenario, the antenna has a stable resonance at a 2.45 GHz frequency and maintains a SAR within the 1.6 W/kg safety limit. Additionally, our optimization reduced computational effort by about 30% compared to traditional methods. These results show the effectiveness of combining ANNs and Bayesian optimization in designing high-performance MIMO antennas, advancing wireless communication for wearable IoT devices.
期刊介绍:
The Brazilian Journal of Physics is a peer-reviewed international journal published by the Brazilian Physical Society (SBF). The journal publishes new and original research results from all areas of physics, obtained in Brazil and from anywhere else in the world. Contents include theoretical, practical and experimental papers as well as high-quality review papers. Submissions should follow the generally accepted structure for journal articles with basic elements: title, abstract, introduction, results, conclusions, and references.