Braking Intention Identification Strategy of Electric Loader Based on Fuzzy Control
Abstract
:Featured Application
Abstract
1. Introduction
2. Analysis of Typical Working Conditions of Electric Loader
2.1. Working Mode
2.2. The Test of Working Conditions under “V” and “T” Types
3. Fuzzy Controller Design
3.1. Braking Conditions Analysis
- (1)
- Sliding brake. The driver releases the accelerator pedal completely and does not step on the brake pedal. The vehicle speed is only affected by the friction force of ground and air, which is named sliding brake condition.
- (2)
- Mild braking. The driver releases the accelerator pedal completely and steps on the brake pedal gently, the braking strength demand is small. The purpose is mainly to adjust speed, avoid obstacles, or brake under a small speed.
- (3)
- Moderate braking. The driver releases the accelerator pedal completely and steps on brake pedal with a moderate speed, the brake pedal displacement continues to increase or maintain at a medium value. At this time, the braking strength increases, and the braking distance is shorter.
- (4)
- Emergency braking: When there is an emergency situation during driving, it is hoped that electric loader can brake immediately, so the driver steps on the brake pedal with the fastest speed, the brake pedal displacement reaches the maximum.
3.2. Deceleration Intention Identification Based on Accelerator Pedal
3.3. Braking Intention Identification Based on Brake Pedal
3.4. Sliding Brake Intention Identification
3.5. Emergency Braking Intention Identification Based on Hydraulic Braking Pressure
4. Simulation Analysis
- (1)
- Simulation results of deceleration intention identification based on accelerator pedal.
- (2)
- Simulation results of braking intention identification based on brake pedal.
- (3)
- Simulation results of sliding brake intention identification.
- (4)
- Emergency braking intention identification based on hydraulic brake pressure
5. Prototype Test
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
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Stage | Contents | Motion State | Stage | Contents | Motion State |
---|---|---|---|---|---|
1 | Forward with no load | Accelerating | 4 | Forward with full-load | Accelerating |
Uniform speed | Uniform speed | ||||
Decelerating | Decelerating | ||||
2 | Loading | Stop | 5 | Unloading | Stop |
3 | Backward with full-load | Accelerating | 6 | Backward with no load | Accelerating |
Uniform speed | Uniform speed | ||||
Decelerating | Decelerating |
Stepping Speed of Accelerator Pedal V | NH (Negative High) | NM (Negative Medium) | NL (Negative Low) | NS (Negative Small) | NO (Negative Zero) |
---|---|---|---|---|---|
Deceleration intention | O | S | L | M | H |
Deceleration Strength | Deceleration Intention | ||||
---|---|---|---|---|---|
Vehicle speed | O | S | L | M | H |
L (low) | VS | SL | SL | M | SH |
M (Medium) | VS | SL | L | M | SH |
H (High) | SL | L | M | H | SH |
Braking Intention | Brake Pedal Displacement | ||||
---|---|---|---|---|---|
Displacement change rate | O | S | M | H | VH |
S (Small) | O | VS | S | M | H |
M (Medium) | O | VS | M | H | VH |
H (High) | O | S | H | H | VH |
Braking Strength | Braking Intention | |||||
---|---|---|---|---|---|---|
Vehicle speed | O | VS | S | M | H | VH |
S (Small) | O | VS | S | S | M | VH |
M (Medium) | O | VS | S | M | H | VH |
H (High) | O | S | M | H | H | VH |
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Ye, Y.; Wu, X.; Lin, T. Braking Intention Identification Strategy of Electric Loader Based on Fuzzy Control. Appl. Sci. 2023, 13, 11547. https://doi.org/10.3390/app132011547
Ye Y, Wu X, Lin T. Braking Intention Identification Strategy of Electric Loader Based on Fuzzy Control. Applied Sciences. 2023; 13(20):11547. https://doi.org/10.3390/app132011547
Chicago/Turabian StyleYe, Yueying, Xia Wu, and Tianliang Lin. 2023. "Braking Intention Identification Strategy of Electric Loader Based on Fuzzy Control" Applied Sciences 13, no. 20: 11547. https://doi.org/10.3390/app132011547
APA StyleYe, Y., Wu, X., & Lin, T. (2023). Braking Intention Identification Strategy of Electric Loader Based on Fuzzy Control. Applied Sciences, 13(20), 11547. https://doi.org/10.3390/app132011547