In this paper, a novel optimal technique for joint angles trajectory tracking control with energy optimization for a biped robot with toe foot is proposed. For the task of climbing stairs by a 9-link biped model, a cycloid trajectory for swing phase is proposed in such a way that the cycloid variables depend on the staircase dimensions. Zero Moment Point(ZMP) criteria is taken for satisfying stability constraint. This paper mainly can be divided into 3 steps: 1) Planning stable cycloid trajectory for initial step and subsequent step for climbing upstairs and Inverse Kinematics using an unsupervised artificial neural network with knot shifting procedure for jerk minimization. 2) Modeling Dynamics for Toe foot biped model using Lagrange Dynamics along with contact modeling using spring-damper system followed by developing Neural Network Temporal Quantized Lagrange Dynamics which takes inverse kinematics output from neural network as its inputs. 3) Using Ant Colony Optimization to tune PD (Proportional Derivative) controller parameters and torso angle with the objective to minimize joint space trajectory errors and total energy consumed. Three cases with variable staircase dimensions have been taken and a brief comparison is done to verify the effectiveness of our proposed work Generated patterns have been simulated in MATLAB .
翻译:在本文中,为双脚双脚机器人提出了一种新型的最佳联合角度轨迹跟踪控制技术,以节能优化方式对双脚双脚的双向机器人进行联合角轨迹跟踪控制。对于以9连双双双型模型攀登楼梯的任务,提出了滚动阶段环形轨迹,其方式是使环形变量取决于楼梯尺寸。为了满足稳定性的制约,采用了Zoro Moment Point(ZMP)标准。本文件主要可以分为三个步骤:1) 规划稳定的环形轨轨迹,用于第一步和随后一步,用于爬上楼上和反金体数学,使用不受监督的人工神经网络,并采用结结节转移程序,最大限度地减少自动。2) 利用拉格朗奇动力和接触模型模型,模拟波形变轨动态,随后开发神经网络的温度输出反向,作为其投入。 3 利用无监督的人工神经控制器控制器和托尔索角度,以目标为最小化联合空间轨迹模式进行模拟。