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Overview of Robotic Path Planning Rahul Kala, Department of Information Technology Indian Institute of Information Technology and Management Gwalior http://students.iiitm.ac.in/~ipg_200545/ [email protected], [email protected] Department of Information Communication Technology Indian Institute of Information Technology and Management Gwalior Rahul Kala Publications Kala, Rahul, Shukla, Anupam & Tiwari, Ritu (2009), Robotic Path Planning using Multi Neuron Heuristic Search, Proceedings of the ACM 2009 International Conference on Computer Sciences and Convergence Information Technology, ICCIT 2009, pp 1318-1323, Seoul, Korea Kala, Rahul, Shukla, Anupam, Tiwari, Ritu, Roongta, Sourabh & Janghel, RR (2009) Mobile Robot Navigation Control in Moving Obstacle Environment using Genetic Algorithm, Artificial Neural Networks and A* Algorithm, Proceedings of the IEEE World Congress on Computer Science and Information Engineering, CSIE 2009, pp 705-713, Los Angeles/Anaheim, USA Shukla, Anupam, Tiwari, Ritu & Kala, Rahul (2008), Mobile Robot Navigation Control in Moving Obstacle Environment using A* Algorithm, Proceedings of the International conference on Artificial Neural Networks in Engineering, ANNIE 2008, Intelligent Systems Engineering Systems through Artificial Neural Networks, ASME Publications, Vol. 18, pp 113-120, Nov 2008 Shukla, Anupam, Tiwari, Ritu, Kala, Rahul (2009) Mobile Robot Navigation Control in Moving Obstacle Environment using Genetic Algorithms and Artificial Neural Networks, International Journal of Artificial Intelligence and Computational Research, Vol. 1, No. 1, pp 1-12, June 2009 Department of Information Communication Technology Indian Institute of Information Technology and Management Gwalior Rahul Kala Research in MOBILE ROBOT PATH PLANNING Inputs The Problem Statement ◦ Robotic Map ◦ Location of Obstacles ◦ Static and Dynamic Constraints ◦ Time Constraints ◦ Dimensionality of Map ◦ Static and Dynamic Environment Output •Path P such that no collision occurs Department of Information Communication Technology Indian Institute of Information Technology and Management Gwalior Rahul Kala Problem Implementation by Existing Algorithms: Self designed Algorithms: Multi Algorithms/Hierarchical Algorithms A* Algorithm Artificial Neural Networks Genetic Algorithms Multi-Neuron Heuristic Search (MNHS) Neuro-Fuzzy Hierarchal MNHS Hierarchical A* with Genetically Optimized Fuzzy Inference System Evolving Robotic Path with Genetically Optimized Fuzzy Inference System Swarm Intelligence etc Department of Information Communication Technology Indian Institute of Information Technology and Management Gwalior Rahul Kala A* Algorithm “I believe this is this way takes me shortest to the destination…. Lets give it a try” “Hey I got struck… I’ll choose another path” Add all possible moves in an open list. Make the best move as per open list status Add all executed moves in the closed list Department of Information Communication Technology Indian Institute of Information Technology and Management Gwalior Rahul Kala Results Department of Information Communication Technology Indian Institute of Information Technology and Management Gwalior Rahul Kala ANN with Back Propagation Algorithm “Whenever this type of situation arrives… Always make this move” “Hey rules failed… I’m struck… OK make random moves till you are out” Frame input/output pairs for every situation comprising of robot position, goal position and environment Learn these and use them in decision making Make random moves when position deteriorates Department of Information Communication Technology Indian Institute of Information Technology and Management Gwalior Rahul Kala Results Department of Information Communication Technology Indian Institute of Information Technology and Management Gwalior Rahul Kala Genetic Algorithms “Show me some random paths so that I may decide” “OK this path is the best to go till a point and this path the best for the other part of the journey… Let me mix them both…” Generate random complete and incomplete solutions: source to nowhere, nowhere to goal and source to goal Try to mix paths to attain optimality Generate random paths between needed points Department of Information Communication Technology Indian Institute of Information Technology and Management Gwalior Rahul Kala Graphical Genetic Operators Mutation Department of Information Communication Technology Indian Institute of Information Technology and Management Gwalior Rahul Kala Results Department of Information Communication Technology Indian Institute of Information Technology and Management Gwalior Rahul Kala MNHS Algorithm “I believe this is this way takes me shortest to the destination…. Lets give it a try” “But in the process I may get struck… Lets walk a few steps on bad paths as well” Add all possible moves in an open list. Make the a range of moves best to worst as per open list status Add all executed moves in the closed list Department of Information Communication Technology Indian Institute of Information Technology and Management Gwalior Rahul Kala Basic Concept of MNHS Department of Information Communication Technology Indian Institute of Information Technology and Management Gwalior Rahul Kala Results Department of Information Communication Technology Indian Institute of Information Technology and Management Gwalior Rahul Kala These are theoretically advocated and experimentally supported Simple Algorithm Analysis Algorithm Advantages Disadvantages A* Algorithm Computationally shortest paths in best times. Works only for small graphs and restricted and quantized moves Artificial Neural Networks Can incorporate dynamic changes in environment. Computationally very fast Only works for simple graphs. Gets trapped in complex graphs. Path not optimal. Restricted Moves. Genetic Algorithms Work for larger and complex graph. Computationally expensive. MNHS Low computation and best path lengths in complex and uncertain graphs Works only for small graphs and restricted and quantized moves Neuro-Fuzzy Algorithms Can incorporate dynamic changes in environment. Computationally very fast Only works for simple graphs. Gets trapped in complex graphs. Path not optimal. Department of Information Communication Technology Indian Institute of Information Technology and Management Gwalior Rahul Kala The Big Observation Individual Simple Algorithms have disadvantages … They’re too simple for many complex situations and hence the game starts… Department of Information Communication Technology Indian Institute of Information Technology and Management Gwalior Rahul Kala ThankYou Department of Information Communication Technology Indian Institute of Information Technology and Management Gwalior Rahul Kala