A Robot Obstacle Avoidance Method based on Random Forest HTM Cortical Learning Algorithm

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Abstract

Robotics mainly concern with the movement of robot with improvement obstacle avoidance, this issue is handed. It contains of a Microcontroller to process the data, and Ultrasonic sensors to detect the obstacles on its path. Artificial intelligence is used to predict the presence of obstacle in the path. In this research random forest algorithm is used and it is improved by RFHTMC algorithm. Deep learning mainly compromises of reducing the mean absolute error of forecasting. Problem with random forest is time complexity, as it involves formation of many classification trees. The proposed algorithm reduces the set of rules which is used for classification model, to improve time complexity. Performance analysis shows an significant improvement in results as compare to other deep learning algorithm as well as random forest. Forecasting accuracy shows 8% improvement as compare to random forest with 26% reduced operation time.

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Abdulkadium, A. M. (2020). A Robot Obstacle Avoidance Method based on Random Forest HTM Cortical Learning Algorithm. Webology, 17(2), 788–803. https://doi.org/10.14704/WEB/V17I2/WEB17067

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