Robust Autonomous Mobile Manipulation for Substation Inspection

Author:

Pearson Erik1,Mirisola Benjamin22,Murphy Cameron22,Huang Christine11,O’Leary Connor11,Wong Franklin11,Meyerson Julia33,Bonfim Luisa22,Zecca Matthew11,Spina Noah11,Szenher Paul11,Katari Shalemuraju11,Bhatt Shiv11,Dohi Takumasa11,Colarusso Thomas11,Gana Thomas11,Englot Brendan1

Affiliation:

1. Stevens Institute of Technology Department of Mechanical Engineering, , 1 Castle Point Terrace, Hoboken, NJ 07030

2. Stevens Institute of Technology Department of Electrical and Computer Engineering, , 1 Castle Point Terrace, Hoboken, NJ 07030

3. Carnegie Mellon University Department of Mechanical Engineering, , 5000 Forbes Avenue, Pittsburgh, PA 15213

Abstract

Abstract The need for autonomous infrastructure inspections performed by mobile robots is becoming increasingly prevalent, to mitigate human error and inspect critical infrastructure with increased frequency, while reducing costs. Electric distribution substations contain a variety of high-power equipment that may occasionally fail, and we focus on inspecting pothead compartments as a representative test case. Frequent measurements of acoustic and transient earth voltage data can indicate degradation before failures occur. Handheld partial discharge (PD) sensors can gather these types of data. Measurements using PD sensors can be automated using a mobile manipulation platform with a custom end-effector. Accurate mapping, localization, and navigation are required to perform autonomous inspection tasks in indoor environments with unmanned ground vehicles. Computer vision and precise manipulator control are necessary for successful handheld sensor interactions. In this paper, we present and analyze a custom-integrated mobile manipulation system capable of performing these functions, which achieves a tradeoff between the small size needed to navigate through low-clearance areas, and the reach capabilities needed to collect the required measurements from pothead compartments.

Funder

Consolidated Edison

Publisher

ASME International

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