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Introducing MantisBot: Hexapod robot controlled by a high-fidelity, real-time neural simulation

机译:MantisBot简介:由高保真实时神经仿真控制的六足机器人

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We present MantisBot, a 28 degree of freedom robot controlled by a high-fidelity neural simulation. It is modeled after the mantis, with many degrees of freedom, because we intend to study directed behaviors and leg multi-functionality, such as prey tracking and striking. As a first step, we present a distributed reflexive posture controller. MantisBot maintains posture through a series of reflexes observed in insects, specifically: strain measurements from a leg produce proportional torque commands (reflex A); large or rapidly decreasing leg strains produce a rapid, single “restep” (reflex B); a leg can only restep if its neighboring legs are all under strain (reflex C); and a leg will search for the ground if it does not reach it as expected (reflex D). All of these reflexes contribute to a hardware platform's posture, and are implemented in a highly distributed fashion. The two most distal joints in each leg each has its own central pattern generator (CPG, 12 total), upon which all of these behaviors depend. To achieve the desired dynamics, we implement a control network of conductance-based neurons with persistent sodium channels arranged in a network like the animal may possess in its thoracic ganglia. The result is a robot capable of actively maintaining posture without a centralized planner or body model. In addition, the network implementation is fast, calculating network dynamics 150 times faster than real time.
机译:我们介绍了MantisBot,这是一种由高保真神经模拟控制的28自由度机器人。它以螳螂为原型,具有许多自由度,因为我们打算研究定向行为和腿的多功能性,例如猎物的追踪和打击。第一步,我们介绍一个分布式反射姿势控制器。 MantisBot通过在昆虫中观察到的一系列反射来保持姿势,特别是:从腿部进行的应变测量会产生成比例的转矩指令(反射A);大腿弯曲或迅速减少的腿部弯曲会产生快速,单一的“后退”(反射B);一条腿只有在其相邻的腿都处于拉紧状态时才能后退(反射C);如果一条腿没有按预期到达地面,则它会搜索地面(反射D)。所有这些反射都有助于硬件平台的状态,并以高度分布式的方式实现。每条腿中的两个最远端的关节各有其自己的中央模式发生器(CPG,共12个),所有这些行为都取决于该中央模式发生器。为了实现所需的动力学,我们实现了一个基于电导的神经元控制网络,该网络具有在动物的胸神经节中可能具有的排列在网络中的持久性钠通道。结果是,无需集中规划器或人体模型,就能够主动保持姿势的机器人。此外,网络实现速度很快,网络动态计算速度比实时速度快150倍。

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