Design of a Human Evaluator Model for the Ride Comfort of Vehicle on a Speed Bump Using a Neural Artistic Style Extraction
Abstract
:1. Introduction
2. Method
2.1. Data Collection
2.2. Ride Comfort Evaluation Model
2.2.1. Extraction of Ride Comfort from Measurements
2.2.2. Preprocessing Input Data
2.2.3. Vector of Ride Comfort Difference
2.2.4. Comparative Model of Ride Comfort
3. Results and Discussion
4. Case Study for Use of the Correlation Model
Sensitivity Evaluation of Signal Changes to Ride Comfort
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Rating Scale | Event Type | ||
---|---|---|---|
Disturbance | Control | ||
10 | Desirable | Imperceptible | Excellent |
9 | Trace | ||
8 | A Little | Good | |
7 | Some | ||
6 | Moderate | Fair | |
5 | Borderline | ||
4 | Undesirable | Annoying | Poor |
3 | Strong | ||
2 | Severe | Very Poor | |
1 | Not Acceptable |
Damper Settings (Front/Rear) | Primary Ride | Impact (Secondary Ride) |
---|---|---|
H/H | 6+ | 6 |
H/M | 6+ to 7− | 6+ |
H/S | 6 | 6 to 6+ |
M/H | 7− | 6+ |
M/M | 6+ | 6+ |
M/S | 6 | 6+ |
S/H | 6 | 6 to 6+ |
S/M | 6 to 6+ | 6+ |
S/S | 6+ | 6+ to 7− |
Cases | 1 | 2 | 3 | 4 | 5 | 6 | 7 |
---|---|---|---|---|---|---|---|
Pitch rate reduction | O | X | X | O | O | X | O |
Acceleration reduction | X | O | X | O | X | O | O |
Phase lag reduction | X | X | O | X | O | O | O |
Improvement of primary ride comfort | Y | N | Y | Y | Y | Y | Y |
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Kim, D.; Jeong, M.; Bae, B.; Ahn, C. Design of a Human Evaluator Model for the Ride Comfort of Vehicle on a Speed Bump Using a Neural Artistic Style Extraction. Sensors 2019, 19, 5407. https://doi.org/10.3390/s19245407
Kim D, Jeong M, Bae B, Ahn C. Design of a Human Evaluator Model for the Ride Comfort of Vehicle on a Speed Bump Using a Neural Artistic Style Extraction. Sensors. 2019; 19(24):5407. https://doi.org/10.3390/s19245407
Chicago/Turabian StyleKim, Donggyun, MyeonGyu Jeong, ByungGuk Bae, and Changsun Ahn. 2019. "Design of a Human Evaluator Model for the Ride Comfort of Vehicle on a Speed Bump Using a Neural Artistic Style Extraction" Sensors 19, no. 24: 5407. https://doi.org/10.3390/s19245407
APA StyleKim, D., Jeong, M., Bae, B., & Ahn, C. (2019). Design of a Human Evaluator Model for the Ride Comfort of Vehicle on a Speed Bump Using a Neural Artistic Style Extraction. Sensors, 19(24), 5407. https://doi.org/10.3390/s19245407