Computer Science ›› 2025, Vol. 52 ›› Issue (11A): 241100116-9.doi: 10.11896/jsjkx.241100116
• Big Data & Data Science • Previous Articles Next Articles
WANG Rui1, WANG Zhikai1, ZHONG Yiming1, SUN Hui1, YANG Kaixin2
CLC Number:
| [1]CAO Y C,LIU Y Z,SHEN D Y.Comparative analysis of de-mand forecasting models for replaceable parts in airline routes[J].Industrial Engineering,2022,25(6):101-109. [2]FENG Y W,CHEN J Y,LIU J Q,et al.Review on the civil aircraft spare parts prediction and configuration management technology[J].Advances in Aeronautical Science and Engineering,2020,11(4):443-453. [3]WANG R,QIN Y,SUN H.Research on location selection strate-gy for airlines spare parts central warehouse based on METRIC[J].Computational Intelligence and Neuroscience,2021,2021. [4]SHAFI I,SOHAIL A,AHMAD J,et al.Spare parts forecasting and lumpiness classification using neural network model and its impact on aviation safety[J].Applied Sciences,2023,13(9):5475. [5]WANG F.A review on demand forecasting methods for aviation materials based on different classifications[J].Science and Technology Innovation and Application,2015(26):58-59. [6]CHEN Z L,XUE Y L.Research on Prediction Model of Aviation Material Consumption Based on Nonparametric Regression[J].Journal of Ordnance Equipment Engineering,2020,41(6):132-135. [7]ZUO S,LU J J,TIAN L,et al.Application of simple movingaverage forecasting method in aviation material support[J].Scientific and Technological Information 2008,30(2):87-88. [8]JOHNSTON F R,BOYLAN J E.Forecasting for Items with Intermittent Demand[J].Journal of the Operational Research Society,1996,47(1):113-121. [9]SHI Y S,WANG W Q.Forecasting of aviation material demand based on improved triple exponential smoothing method[J].Computer Engineering and Design,2020,41(11):3118-3122. [10]GUO F,LIU C Y,LI W L.Research on the prediction of aviation material consumption quota based on exponential smoothing method[J].Computer and Modernization,2012,205(9):163-165. [11]CROSTONJ D.Forecasting And Stock Control For Intermit-Tent Demands[J].Operational Research Quarterly,1972,23(3):289-303. [12]SYNTETOS A A,BOYLAN J E.On the Variance of Intermittent Demand Estimates[J].International Journal of Production Economics,2010,128(2):546-555. [13]KAYA G O,SAHIN M,DEMIREL O F.Intermittent demand forecasting:a guideline for method selection[J].Sadhana,2020,45(1):51. [14]WANG J,PAN X,WANG L,et al.Method of spare parts prediction models evaluation based on grey comprehensive correlation degree and association rules mining:A case study in aviation[J].Mathematical Problems in Engineering,2018,2018. [15]ZHANG Y,HU Y,WANG H.Forecast of aviation material consumption based on an improved grey prediction model[J].Southern Agricultural Machinery,2020,51(1):60-62. [16]ZHI L,XU G Y.Grey prediction of excessive consumption time of aviation materials[J].Journal of Xi’an University of Architecture and Technology(Natural Science Edition),2005(3):439-441. [17]FENG Y W,CHEN J Y,LU C,et al.Civil aircraft spare parts prediction and configuration management techniques:review and prospect[J].Advances in Mechanical Engineering,2021,13(6):16878140211026173. [18]GHOBBAR A A,FRIEND C H.Evaluation of forecasting me-thods for intermittent parts demand in the field of aviation:a predictive model[J].Computers & Operations Research,2003,30(14):2097-2114. [19]LEVNER E,PERLMAN Y.CHENG T C E,et al.A Network Approach To Modeling The Multi-Echelon Spare-Part In-Ventory System With Backorders And Interval-Valued Demand[J].International Journal of Production Economics,2011,132(1):43-51. [20]HUA Z,ZHANG B.A hybrid support vector machines and logistic regression approach for forecasting intermittent demand of spare parts[J].Applied Mathematics and Computation,2006,181(2):1035-1048. [21]BABAI M Z,TSADIRAS A,PAPADOPOULOS C.On the empirical performance of some new neural network methods for forecasting intermittent demand[J].IMA Journal of Management Mathematics,2020,31(3):281-305. [22]ZENG H R,FENG Y W,LU C,et al.Research on consumption forecasting of civil aircraft materials based on support vector regression[J].Advances in Aeronautical Engineering,2021,12(5):75-79. [23]SUN S S,XU C K,HE Y Q.Prediction model of aviation material consumption based on RS-PSO-SVM[J].Journal of Nanjing University of Aeronautics and Astronautics,2021,53(6):881-887. [24]LI H Q,CAI K L,HAO M,et al.Research on the prediction of aviation material carrying demand based on GRA-IPSO-SVM[J].Advances in Aeronautical Engineering,2022,13(6):166-172. [25]ZENG H R,FENG Y W,LU C,et al.Prediction method of domestic civil aircraft material consumption based on improved Generative Adversarial Networks[J].Systems Engineering and Electronics,2022,10(25):1-9. [26]FU W F,MU C H,LIU Y J.Adaptive prediction of aviationconsumable demand based on machine learning methods[J].Science Technology and Engineering,2022,22(11):4609-4617. [27]GU Y X,XU C K,NI B.Support vector machine aviation material consumption prediction method considering whole process optimization[J].Fire Control and Command Control,2022,47(6):81-86 [28]CHEN Q,LAN X X,LIU X J.Large number interference signal identification based on PCA-RF algorithm[J].Mechanical and Electrical Engineering Technology,2023,52(8):176-180. [29]WANG S,LIU L.Soil moisture data reconstruction algorithmbased on PCA-MC[J].Computer Science,2023,50(S2):458-463. [30]LI K J,XU Y S,WEI B G,et al.Transformer top oil temperature prediction model based on PSO-HKELM[J].High Voltage Engineering,2018,44(8):2501-2508. [31]XING L,LIU Y C.Internal trading identification based on PSO-HKELM[J].Journal of Changchun University of Technology,2024,45(3):282-288. [32]XIE G M,LIU D Y,LIU M.Transformer fault identification based on multi-strategy improved MPA algorithm and HKELM[J].Journal of Electronic Measurement and Instrumentation,2023,37(4):172-182. [33]LV Y S,ZHANG D L,BI Y J,et al.Transformer fault diagnosis based on improved kernel extreme learning machine[J].Electrical Age,2021(11):56-60. [34]HU H,SONG C Z,GAO Y,et al.Research on aviation material consumption prediction based on random forest algorithm[J].Environmental Technology,2021,39(1):210-214. [35]WANG R,XU X C,LU J.Short-term wind power forecasting based on sparrow search algorithm optimized variational mode decomposition and hybrid kernel extreme learning machine[J].Information and Control,2023,52(4):444-454. [36]XUE J K,SHEN B.A novel swarm intelligence optimization approach:sparrow search algorithm[J].Systems Science & Control Engineering,2020,8(1):22-34. [37]ZHANG S G,ZHANG B.Improved SSA-LSSVM short-termpower load forecasting model based on multiple noise reductions[J].Power Science and Engineering,2022,38(10):54-63. |
| [1] | JIANG Wei, GUO Chengbo, KOU Jiahua, ZHANG Ruowan, GUO Yanling. RFID Indoor Positioning Method Based on Improved Random Forest Algorithm [J]. Computer Science, 2025, 52(6A): 240900124-7. |
| [2] | FEI Chunguo, CHEN Shihong. FOD Segmentation Method Based on Dual-channel Sparrow Search Algorithm-enhanced OTSU [J]. Computer Science, 2025, 52(6A): 240700089-7. |
| [3] | MA Zhaoyang, CHEN Juan, ZHOU Yichang, WU Xianyu, GAO Pengfei, RUAN Wenhao, ZHAN Haoming. TS3:Energy-Efficiency-First Optimal Thread Number Search Algorithm Based on Specific Starting Point Classification [J]. Computer Science, 2025, 52(5): 67-75. |
| [4] | WANG Chao, TANG Chao, WANG Wenjian, ZHANG Jing. Infrared Human Action Recognition Method Based on Multimodal Attention Network [J]. Computer Science, 2024, 51(8): 232-241. |
| [5] | LAI Xin, LI Sining, LIANG Changsheng, ZHANG Hengyan. Ontology-driven Study on Information Structuring of Aeronautical Information Tables [J]. Computer Science, 2024, 51(6A): 230800150-7. |
| [6] | GU Chumei, CAO Jianjun, WANG Baowei, XU Yuxin. Specific Emitter Identification Based on Hybrid Feature Selection [J]. Computer Science, 2024, 51(5): 267-276. |
| [7] | REN Gaoke, MO Xiuliang. Network Security Situation Assessment for GA-LightGBM Based on PRF-RFECV Feature Optimization [J]. Computer Science, 2023, 50(6A): 220400151-6. |
| [8] | JIA Kaiye, DONG Yan. Improved Elite Sparrow Search Algorithm Based on Double Sample Learning and Single-dimensional Search [J]. Computer Science, 2023, 50(2): 317-323. |
| [9] | HAN Yimei, LI Dongxi. Disease Diagnosis Based on Projection Correlation and Random Forest Fusion Model [J]. Computer Science, 2023, 50(11A): 230200172-6. |
| [10] | GAO Zhen-zhuo, WANG Zhi-hai, LIU Hai-yang. Random Shapelet Forest Algorithm Embedded with Canonical Time Series Features [J]. Computer Science, 2022, 49(7): 40-49. |
| [11] | HU Yan-yu, ZHAO Long, DONG Xiang-jun. Two-stage Deep Feature Selection Extraction Algorithm for Cancer Classification [J]. Computer Science, 2022, 49(7): 73-78. |
| [12] | QUE Hua-kun, FENG Xiao-feng, LIU Pan-long, GUO Wen-chong, LI Jian, ZENG Wei-liang, FAN Jing-min. Application of Grassberger Entropy Random Forest to Power-stealing Behavior Detection [J]. Computer Science, 2022, 49(6A): 790-794. |
| [13] | SHAN Xiao-ying, REN Ying-chun. Fishing Type Identification of Marine Fishing Vessels Based on Support Vector Machine Optimized by Improved Sparrow Search Algorithm [J]. Computer Science, 2022, 49(6A): 211-216. |
| [14] | LI Dan-dan, WU Yu-xiang, ZHU Cong-cong, LI Zhong-kang. Improved Sparrow Search Algorithm Based on A Variety of Improved Strategies [J]. Computer Science, 2022, 49(6A): 217-222. |
| [15] | WANG Wen-qiang, JIA Xing-xing, LI Peng. Adaptive Ensemble Ordering Algorithm [J]. Computer Science, 2022, 49(6A): 242-246. |
|
||