Farima Hajiahmadi, Mohammad Jafari, Mahmut Reyhanoglu
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However, environmental obstacles (e.g., rough terrain), variations in solar panel installation (e.g., height disparities, different angles), and uncertainties (e.g., AV and environmental modeling) may degrade the performance of traditional controllers. In this study, a biologically inspired method based on Brain Emotional Learning (BEL) is developed to tackle the aforementioned challenges. The developed controller is implemented numerically using MATLAB-SIMULINK. The paper concludes with a comparative analysis of the AVs’ performance using both PID and developed controllers across various scenarios, highlighting the efficacy and advantages of the intelligent control approach for AVs deployed in solar panel cleaning systems within agricultural solar farms. 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引用次数: 0
摘要
本文介绍了一种基于机器学习(ML)的方法,用于智能控制太阳能电池板清洁系统中使用的自动驾驶汽车(AVs),旨在减轻不确定性、干扰和动态环境带来的挑战。太阳能电池板主要位于太阳能生产的专用土地上(如农业太阳能农场),容易积聚灰尘和碎屑,导致能量吸收减少。与劳动密集型的人工清洁相比,机器人清洁器提供了一种可行的解决方案。配备了运输和精确定位这些清洁机器人的 AV 对于在太阳能电池板阵列之间高效导航是不可或缺的。然而,环境障碍(如崎岖地形)、太阳能电池板安装的变化(如高度差异、角度不同)以及不确定性(如 AV 和环境建模)可能会降低传统控制器的性能。本研究开发了一种基于大脑情感学习(BEL)的生物启发方法,以应对上述挑战。使用 MATLAB-SIMULINK 对所开发的控制器进行了数值实现。论文最后比较分析了使用 PID 控制器和开发的控制器的 AVs 在各种情况下的性能,强调了智能控制方法在农业太阳能农场的太阳能电池板清洁系统中部署 AVs 的功效和优势。仿真结果表明,基于 ML 的控制器性能优越,与 PID 控制器相比有显著改善。
Machine Learning-Based Control of Autonomous Vehicles for Solar Panel Cleaning Systems in Agricultural Solar Farms
This paper presents a machine learning (ML)-based approach for the intelligent control of Autonomous Vehicles (AVs) utilized in solar panel cleaning systems, aiming to mitigate challenges arising from uncertainties, disturbances, and dynamic environments. Solar panels, predominantly situated in dedicated lands for solar energy production (e.g., agricultural solar farms), are susceptible to dust and debris accumulation, leading to diminished energy absorption. Instead of labor-intensive manual cleaning, robotic cleaners offer a viable solution. AVs equipped to transport and precisely position these cleaning robots are indispensable for the efficient navigation among solar panel arrays. However, environmental obstacles (e.g., rough terrain), variations in solar panel installation (e.g., height disparities, different angles), and uncertainties (e.g., AV and environmental modeling) may degrade the performance of traditional controllers. In this study, a biologically inspired method based on Brain Emotional Learning (BEL) is developed to tackle the aforementioned challenges. The developed controller is implemented numerically using MATLAB-SIMULINK. The paper concludes with a comparative analysis of the AVs’ performance using both PID and developed controllers across various scenarios, highlighting the efficacy and advantages of the intelligent control approach for AVs deployed in solar panel cleaning systems within agricultural solar farms. Simulation results demonstrate the superior performance of the ML-based controller, showcasing significant improvements over the PID controller.