Journal of East China Normal University(Natural Science) ›› 2022, Vol. 2022 ›› Issue (5): 219-232.doi: 10.3969/j.issn.1000-5641.2022.05.018
• Spatio-temporal Data Analysis and Intelligent Optimization Theory for Logistics • Previous Articles
Yilin MA, Huiling TAO, Qiwen DONG, Ye WANG*()
Received:
2022-07-10
Online:
2022-09-25
Published:
2022-09-26
Contact:
Ye WANG
E-mail:ywang@dase.ecnu.edu.cn
CLC Number:
Yilin MA, Huiling TAO, Qiwen DONG, Ye WANG. Prediction of remaining useful life of aeroengines based on the Transformer with multi-feature fusion[J]. Journal of East China Normal University(Natural Science), 2022, 2022(5): 219-232.
Table 1
Description of sensors"
传感器编号 | 表示符号 | 具体描述 | 单位 | 传感器编号 | 表示符号 | 具体描述 | 单位 | |
1 | T2 | 风扇入口温度 | °R | 12 | phi | 燃料流量与Ps30的比率 | pps/psia | |
2 | T24 | LPC出口温度 | °R | 13 | NRF | 校正后的风扇速率 | rpm | |
3 | T30 | HPC出口温度 | °R | 14 | NRc | 校正后的核心速率 | rpm | |
4 | T50 | LPT出口温度 | °R | 15 | BPR | 涵道比 | ||
5 | P2 | 风扇入口压力 | psia | 16 | farB | 燃烧室燃料空气比 | ||
6 | P15 | 涵道压力 | psia | 17 | htBleed | 引气焓值 | ||
7 | P30 | HPC出口压力 | psia | 18 | Nf_dmd | 要求的风扇转速 | rpm | |
8 | Nf | 风扇物理转速 | rpm | 19 | PCNfR_dmd | 要求的校正后风扇转速 | rpm | |
9 | Nc | 核心机物理转速 | rpm | 20 | W31 | HPT冷却引气流量 | lbm/s | |
10 | epr | 发动机压力比率 | 21 | W32 | LPT冷却引气流量 | lbm/s | ||
11 | Ps30 | HPC出口静态压力 | psia |
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