首页> 外文期刊>Journal of Intelligent & Robotic Systems: Theory & Application >Evolutionary Robotics Applied to Hexapod Locomotion: a Comparative Study of Simulation Techniques
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Evolutionary Robotics Applied to Hexapod Locomotion: a Comparative Study of Simulation Techniques

机译:应用于六角摄像机的进化机器人:模拟技术的比较研究

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The Evolutionary Robotics (ER) process has been applied extensively to developing control programs to achieve locomotion in legged robots, as an automated alternative to the arduous task of manually creating control programs for such robots. The evolution of such controllers is typically performed in simulation by making use of a physics engine-based robotic simulator. Making use of such physics-based simulators does, however, have certain challenges associated with it, such as these simulators' computational inefficiency, potential issues with lack of accuracy and the human effort required to construct such simulators. The current study therefore proposed and investigated an alternative method of simulation for a hexapod (six-legged) robot in the ER process, and directly compared this newly-proposed simulation method to traditional physics-based simulation. This alternative robotic simulator was built based solely on experimental data acquired directly from observing the behaviour of the robot. This data was used to construct a simulator for the robot based on Artificial Neural Networks (ANNs). To compare this novel simulation method to traditional physics simulation, the ANN-based simulators were used to evolve simple open-loop locomotion controllers for the robot in simulation. The real-world performance of these controllers was compared to that of controllers evolved in a more traditional physics-based simulator. The obtained results indicated that the use of ANN-based simulators produced controllers which could successfully perform the required locomotion task on the real-world robot. In addition, the controllers evolved using the ANN-based simulators allowed the real-world robot to move further than those evolved in the physics-based simulator and the ANN-based simulators were vastly more computationally efficient than the physics-based simulator. This study thus decisively indicated that ANN-based simulators offer a superior alternative to widely-used physics simulators in ER for the locomotion task considered.
机译:进化的机器人(ER)过程已经广泛应用于开发控制程序,以实现腿机器人的运动,作为手动创建此类机器人的控制程序的自动替代。通过利用基于物理发动机的机器人模拟器,通常在模拟中进行这种控制器的演变。然而,利用这种基于物理的模拟器具有某些与之相关的挑战,例如这些模拟器的计算效率低,缺乏准确性和构建此类模拟器所需的人力努力的潜在问题。因此,本研究提出并研究了ER过程中的六足动物(六针)机器人的替代模拟方法,并直接将这种新提出的模拟方法与传统的基于物理学的仿真相比。该替代机器人模拟器仅基于直接从观察机器人的行为获取的实验数据构建。该数据用于基于人工神经网络(ANNS)的机器人构造模拟器。为了将这种新型仿真方法与传统物理模拟进行比较,基于ANN的模拟器用于在模拟中为机器人传播简单的开环机器人控制器。将这些控制器的真实表现与在更传统的基于物理的模拟器中演变的控制器进行了比较。所获得的结果表明,使用基于ANN的模拟器产生的控制器,该控制器可以成功地在现实世界机器人上执行所需的机器人任务。此外,使用基于ANN的模拟器演变的控制器允许实际世界机器人进一步移动,而不是基于物理的模拟器中演变的那些,并且基于ANN的模拟器比基于物理的模拟器更大的计算效率。因此,该研究果断表明基于Ann的模拟器提供了欧尔欧盟广泛使用的物理模拟器的优越替代方案。

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