A Task-Driven, Planner-in-the-Loop Computational Design Framework for Modular Manipulators
Maolin Lei, Edoardo Romiti, Arturo Laurenzi, Rui Dai, Matteo Dalle Vedove, Jiatao Ding, Daniele Fontanelli, Nikos Tsagarakis

TL;DR
This paper introduces a unified, task-driven computational framework for designing and controlling modular manipulators, enabling flexible morphologies and optimized motion planning to improve workspace and efficiency.
Contribution
It presents a novel integrated approach combining trajectory planning, morphology optimization, and bi-branch design for modular manipulators, enhancing adaptability and performance.
Findings
Framework generates feasible designs satisfying constraints.
Customizable objectives for manipulability and effort.
Bi-branch morphology extends workspace without stronger modules.
Abstract
Modular manipulators composed of pre-manufactured and interchangeable modules offer high adaptability across diverse tasks. However, their deployment requires generating feasible motions while jointly optimizing morphology and mounted pose under kinematic, dynamic, and physical constraints. Moreover, traditional single-branch designs often extend reach by increasing link length, which can easily violate torque limits at the base joint. To address these challenges, we propose a unified task-driven computational framework that integrates trajectory planning across varying morphologies with the co-optimization of morphology and mounted pose. Within this framework, a hierarchical model predictive control (HMPC) strategy is developed to enable motion planning for both redundant and non-redundant manipulators. For design optimization, the CMA-ES is employed to efficiently explore a hybrid…
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Taxonomy
TopicsModular Robots and Swarm Intelligence · Robotic Mechanisms and Dynamics · Robotic Path Planning Algorithms
