Title
Baidu Apollo Auto-Calibration System - An Industry-Level Data-Driven and Learning based Vehicle Longitude Dynamic Calibrating Algorithm.
Abstract
For any autonomous driving vehicle, control module determines its road performance and safety, i.e. its precision and stability should stay within a carefully-designed range. Nonetheless, control algorithms require vehicle dynamics (such as longitudinal dynamics) as inputs, which, unfortunately, are obscure to calibrate in real time. As a result, to achieve reasonable performance, most, if not all, research-oriented autonomous vehicles do manual calibrations in a one-by-one fashion. Since manual calibration is not sustainable once entering into mass production stage for industrial purposes, we here introduce a machine-learning based auto-calibration system for autonomous driving vehicles. In this paper, we will show how we build a data-driven longitudinal calibration procedure using machine learning techniques. We first generated offline calibration tables from human driving data. The offline table serves as an initial guess for later uses and it only needs twenty-minutes data collection and process. We then used an online-learning algorithm to appropriately update the initial table (the offline table) based on real-time performance analysis. This longitudinal auto-calibration system has been deployed to more than one hundred Baidu Apollo self-driving vehicles (including hybrid family vehicles and electronic delivery-only vehicles) since April 2018. By August 27, 2018, it had been tested for more than two thousands hours, ten thousands kilometers (6,213 miles) and yet proven to be effective.
Year
Venue
Field
2018
arXiv: Robotics
Longitude,Data collection,Control algorithm,Apollo,Data-driven,Algorithm,Control engineering,Vehicle dynamics,Engineering,Auto calibration,Calibration
DocType
Volume
Citations 
Journal
abs/1808.10134
0
PageRank 
References 
Authors
0.34
2
6
Name
Order
Citations
PageRank
Fan Zhu162.29
Lin Ma244.13
Xin Xu31365100.22
Dingfeng Guo400.34
Xiao Cui500.68
Qi Kong662.43