SPAIROMar 22, 2020

Optimization of Operation Strategy for Primary Torque based hydrostatic Drivetrain using Artificial Intelligence

arXiv:2003.10011v2
Originality Incremental advance
AI Analysis

This work addresses efficiency issues in hydrostatic mobile machines for construction/agriculture, but it is incremental as it builds on an existing control concept with a new detection method.

The paper tackles the problem of poor efficiency in primary torque-controlled wheel loaders during Y cycles by using deep learning to detect these cycles and enable regeneration, achieving 98.2% test accuracy and up to 9% efficiency improvement.

A new primary torque control concept for hydrostatics mobile machines was introduced in 2018. The mentioned concept controls the pressure in a closed circuit by changing the angle of the hydraulic pump to achieve the desired pressure based on a feedback system. Thanks to this concept, a series of advantages are expected. However, while working in a Y cycle, the primary torque-controlled wheel loader has worse performance in efficiency compared to secondary controlled earthmover due to lack of recuperation ability. Alternatively, we use deep learning algorithms to improve machines' regeneration performance. In this paper, we firstly make a potential analysis to show the benefit by utilizing the regeneration process, followed by proposing a series of CRDNNs, which combine CNN, RNN, and DNN, to precisely detect Y cycles. Compared to existing algorithms, the CRDNN with bi-directional LSTMs has the best accuracy, and the CRDNN with LSTMs has a comparable performance but much fewer training parameters. Based on our dataset including 119 truck loading cycles, our best neural network shows a 98.2% test accuracy. Therefore, even with a simple regeneration process, our algorithm can improve the holistic efficiency of mobile machines up to 9% during Y cycle processes if primary torque concept is used.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes