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IoT Enabled Indoor Autonomous Mobile Robot using CNN and Q-Learning

机译:IOT支持使用CNN和Q-Learning的室内自主移动机器人

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This paper focuses on the construction of IoT enabled mobile robot with an arm which can reach the destination autonomously and perform suitable actions in an indoor environment. Object detection and optimal navigation are the required features of a mobile robot that will be achieved through the combined architecture of building necessary Deep Learning and Reinforcement Learning models workable in a lesser memory space. To facilitate navigation in an indoor environment, initially, the environment has been mapped into a minimum number of grids for the experimental purpose. For handling huge memory requirement to run the models for processing, we occasionally transfer required intelligence from cloud setup to RPi, where RPi act as a Fog node in Industry 4.0 environment. The practicality of the robot has been gauged in three different cases (i) where the destination of the robot is known with 100% probability, (ii) where the destination of the robot is uncertain i.e. with lower probability and (iii) the destination is not known. In the first two cases, the objects are assumed to be stationary. Whereas in the third case, the objects can also be dynamic i.e. moving objects. As an application we have chosen Indoor Plant Monitoring System, where the objective is to measure the readings like Soil Moisture, Temperature, etc., of the indoor plant and forward the readings to Ericsson's IOT Accelerator platform. After analyzing the sensor values, a robot arm can initiate specific actions on its own. Here, the application of AI algorithms will not only help the robot to reach the destination, but it also triggers the robot to perform the functions optimally. As an experiment, we have studied the effect of learning rate on the total number of actions and introduces optimal reward from start to end of a journey in 4X4 grid world environment and finally tested for tangible performance towards navigation and object detection.
机译:本文重点介绍IOT支持的移动机器人,其臂可以自主地到达目的地并在室内环境中执行合适的动作。物体检测和最佳导航是移动机器人所需的特征,将通过组合的建筑物建筑物的综合建筑结构实现,并在更小的内存空间中可行的加固学习模型。为了便于在室内环境中导航,最初,环境已被映射到实验目的的最小网格数。为了处理巨大的内存要求来运行处理模型进行处理,我们偶尔将所需的智能从云设置转移到RPI,其中RPI充当工业4.0环境中的雾节点。在三种不同的情况下,机器人的实用性已经衡量(i),其中机器人的目的地以100%概率已知,(ii),机器人的目的地是不确定的IE,并且(iii)目的地是未知。在前两种情况下,假设对象是静止的。虽然在第三种情况下,对象也可以是动态的i.e.移动物体。作为我们选择的应用程序,选择室内植物监测系统,其中目标是测量室内植物的土壤湿度,温度等等读数,并将读物转发给爱立信的IOT加速器平台。在分析传感器值后,机器人臂可以自己启动特定的动作。这里,AI算法的应用不仅可以帮助机器人到达目的地,而且还触发了机器人以最佳地执行功能。作为一个实验,我们研究了学习率对行动总数的影响,并从4x4电网世界环境中开始介绍了最佳奖励,最后测试了用于导航和物体检测的有形性能。

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