Zinan Liu’s scientific contributions

What is this page?


This page lists works of an author who doesn't have a ResearchGate profile or hasn't added the works to their profile yet. It is automatically generated from public (personal) data to further our legitimate goal of comprehensive and accurate scientific recordkeeping. If you are this author and want this page removed, please let us know.

Publications (3)


Local Online Motor Babbling: Learning Motor Abundance of a Musculoskeletal Robot Arm *
  • Conference Paper

November 2019

·

27 Reads

·

3 Citations

Zinan Liu

·

Arne Hitzmann

·

·

[...]

·


Local Online Motor Babbling: Learning Motor Abundance of A Musculoskeletal Robot Arm

June 2019

·

59 Reads

Motor babbling and goal babbling has been used for sensorimotor learning of highly redundant systems in soft robotics. Recent works in goal babbling has demonstrated successful learning of inverse kinematics (IK) on such systems, and suggests that babbling in the goal space better resolves motor redundancy by learning as few sensorimotor mapping as possible. However, for musculoskeletal robot systems, motor redundancy can be of useful information to explain muscle activation patterns, thus the term motor abundance. In this work, we introduce some simple heuristics to empirically define the unknown goal space, and learn the inverse kinematics of a 10 DoF musculoskeletal robot arm using directed goal babbling. We then further propose local online motor babbling using Covariance Matrix Adaptation Evolution Strategy (CMA-ES), which bootstraps on the collected samples in goal babbling for initialization, such that motor abundance can be queried for any static goal within the defined goal space. The result shows that our motor babbling approach can efficiently explore motor abundance, and gives useful insights in terms of muscle stiffness and synergy.


Figure 4: Initial covariance matrices displayed as heatmap.
Learning walk and trot from the same objective using different types of exploration
  • Preprint
  • File available

April 2019

·

87 Reads

In quadruped gait learning, policy search methods that scale high dimensional continuous action spaces are commonly used. In most approaches, it is necessary to introduce prior knowledge on the gaits to limit the highly non-convex search space of the policies. In this work, we propose a new approach to encode the symmetry properties of the desired gaits, on the initial covariance of the Gaussian search distribution, allowing for strategic exploration. Using episode-based likelihood ratio policy gradient and relative entropy policy search, we learned the gaits walk and trot on a simulated quadruped. Comparing these gaits to random gaits learned by initialized diagonal covariance matrix, we show that the performance can be significantly enhanced.

Download

Citations (1)


... So far, active learning has been applied to a variety of problems, including motion planning [19]- [21], navigation [22]- [24], and dynamic modeling [25]- [27]. It has also been applied to manipulator kinematics models, such as humanindependent calibration [28] and modeling the complex kinematics of redundant multi-degree-of-freedom robots [29]- [31]. The tensegrity manipulator in this study is one of the most complex manipulators, thus likely prone to biased datasets and data inefficiency. ...

Reference:

Active Learning for Forward/Inverse Kinematics of Redundantly-driven Flexible Tensegrity Manipulator
Local Online Motor Babbling: Learning Motor Abundance of a Musculoskeletal Robot Arm *
  • Citing Conference Paper
  • November 2019