Search Results for author: Ashutosh Kumar Tiwari

Found 3 papers, 0 papers with code

New Fusion Algorithm provides an alternative approach to Robotic Path planning

no code implementations6 Jun 2020 Ashutosh Kumar Tiwari, Sandeep Varma Nadimpalli

For rapid growth in technology and automation, human tasks are being taken over by robots as robots have proven to be better with both speed and precision.

Augmented Random Search for Quadcopter Control: An alternative to Reinforcement Learning

no code implementations28 Nov 2019 Ashutosh Kumar Tiwari, Sandeep Varma Nadimpalli

Model-based reinforcement learning strategies are believed to exhibit more significant sample complexity than model-free strategies to control dynamical systems, such as quadcopters. This belief that Model-based strategies that involve the use of well-trained neural networks for making such high-level decisions always give better performance can be dispelled by making use of Model-free policy search methods. This paper proposes the use of a model-free random searching strategy, called Augmented Random Search(ARS), which is a better and faster approach of linear policy training for continuous control tasks like controlling a Quadcopters flight. The method achieves state-of-the-art accuracy by eliminating the use of too much data for the training of neural networks that are present in the previous approaches to the task of Quadcopter control. The paper also highlights the performance results of the searching strategy used for this task in a strategically designed task environment with the help of simulations. Reward collection performance over 1000 episodes and agents behavior in flight for augmented random search is compared with that of the behavior for reinforcement learning state-of-the-art algorithm, called Deep Deterministic policy gradient(DDPG). Our simulations and results manifest that a high variability in performance is observed in commonly used strategies for sample efficiency of such tasks but the built policy network of ARS-Quad can react relatively accurately to step response providing a better performing alternative to reinforcement learning strategies.

Continuous Control Model-based Reinforcement Learning +2

Blind Modulation Classification based on MLP and PNN

no code implementations30 May 2016 Harishchandra Dubey, Nandita, Ashutosh Kumar Tiwari

In this work, a pattern recognition system is investigated for blind automatic classification of digitally modulated communication signals.

Classification General Classification

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