Abstract
A sizable part of the fleet of heavy-duty machinery in the construction equipment industry uses the conventional valve-controlled load-sensing hydraulics. Rigorous climate actions towards reducing CO2 emissions has sparked the development of solutions to lower the energy consumption and increase the productivity of the machines. One promising solution to having a better balance between energy and performance is to build accurate models (digital twins) of the real systems using data together with recent advances in machine learning/model-based optimization to improve the control systems. With a particular focus on real-world machines with multiple flow-controlled
actuators and shared variable-displacement pumps, this paper presents a generalized machine learning approach to modeling the working pressure of the actuators and the overall pump pressures. The procedures for deriving reaction forces and flow rates as important input variables to the surrogate models are described in detail. Using data from a real loader crane testbed, we demonstrate training and validation of individual models, and showcase the accuracy of pressure predictions in five different experiments under various utilizations and pressure levels.
actuators and shared variable-displacement pumps, this paper presents a generalized machine learning approach to modeling the working pressure of the actuators and the overall pump pressures. The procedures for deriving reaction forces and flow rates as important input variables to the surrogate models are described in detail. Using data from a real loader crane testbed, we demonstrate training and validation of individual models, and showcase the accuracy of pressure predictions in five different experiments under various utilizations and pressure levels.
| Original language | English |
|---|---|
| Title of host publication | SICFP 23 Proceedings |
| Subtitle of host publication | The 18th Scandinavian International Conference on Fluid Power, Tampere, Finland 30 May - 1 June, 2023 |
| Editors | Tatiana Minav, Janne Uusi-Heikkilä |
| Publisher | Tampereen yliopisto |
| ISBN (Electronic) | 978-952-03-2911-2 |
| ISBN (Print) | 978-952-03-2910-5 |
| Publication status | Published - 30 May 2023 |
| MoE publication type | A4 Conference publication |
| Event | Scandinavian International Conference on Fluid Power - Tampere, Finland Duration: 30 May 2023 → 1 Jun 2023 Conference number: 18 |
Conference
| Conference | Scandinavian International Conference on Fluid Power |
|---|---|
| Abbreviated title | SICFP |
| Country/Territory | Finland |
| City | Tampere |
| Period | 30/05/2023 → 01/06/2023 |
UN SDGs
This output contributes to the following UN Sustainable Development Goals (SDGs)
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SDG 13 Climate Action
Keywords
- non-road mobile machine
- electrification
- hydraulics
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