RNN / LSTM with modified Adam optimizer in deep learning approach for automobile spare parts demand forecasting

被引:0
|
作者
Kiran Kumar Chandriah
Raghavendra V. Naraganahalli
机构
[1] Visveswaraya Technological University,Department of Mechanical Engineering
[2] National Institute of Engineering (NIE),Department of Mechanical Engineering
来源
关键词
Demand forecasting; Deep learning; Long-short term memory; Modified-Adam; Recurrent neural networks; Spare parts;
D O I
暂无
中图分类号
学科分类号
摘要
The spare parts demand forecasting is very much essential for the organizations to minimize the cost and prevent the stock outs. The demand of spare parts/ car sales distribution is an important factor in inventory control. The valuation of the demand is challenging as the automobile spare parts/car sales demand are often recurrent. The renowned empirical method adopts historical demand data to create the distribution of lead time demand. Although it works reasonably well when service requirements are relatively low, it has difficulty reaching high target service levels. In this paper, we proposed Recurrent Neural Networks/ Long-Short Term Memory (RNN / LSTM) with modified Adam optimizer to predict the demand for spare parts. In this LSTM, weight vectors are generated respectively. These weights are optimized using the Modified-Adam algorithm. The accuracy of the forecast and the performance of the inventory are considered in the experimental result. Experimental results confirm that RNN / LSTM with a Modified-Adam works well with minimal error compared to other existing methods. We conclude that the proposed RNN/LSTM with Modified-Adam algorithm is well suited for the prediction of automobile spare parts.
引用
收藏
页码:26145 / 26159
页数:14
相关论文
共 50 条
  • [1] RNN / LSTM with modified Adam optimizer in deep learning approach for automobile spare parts demand forecasting
    Chandriah, Kiran Kumar
    Naraganahalli, Raghavendra V.
    MULTIMEDIA TOOLS AND APPLICATIONS, 2021, 80 (17) : 26145 - 26159
  • [2] A new approach of forecasting intermittent demand for spare parts
    Lin L.
    Chen X.
    Zhong S.
    Harbin Gongye Daxue Xuebao/Journal of Harbin Institute of Technology, 2016, 48 (01): : 40 - 45
  • [3] A MODIFIED BOOTSTRAP METHOD FOR INTERMITTENT DEMAND FORECASTING FOR RARE SPARE PARTS
    Jung, Gisun
    Park, Jinsoo
    Kim, Yohan
    Kim, Yun Bae
    INTERNATIONAL JOURNAL OF INDUSTRIAL ENGINEERING-THEORY APPLICATIONS AND PRACTICE, 2017, 24 (02): : 245 - 254
  • [4] Neural network approach to lumpy demand forecasting for spare parts in process industries
    Amin-Naseri, M. R.
    Tabar, B. Rostami
    2008 INTERNATIONAL CONFERENCE ON COMPUTER AND COMMUNICATION ENGINEERING, VOLS 1-3, 2008, : 1378 - 1382
  • [5] A new approach of forecasting intermittent demand for spare parts inventories in the process industries
    Hua, Z. S.
    Zhang, B.
    Yang, J.
    Tan, D. S.
    JOURNAL OF THE OPERATIONAL RESEARCH SOCIETY, 2007, 58 (01) : 52 - 61
  • [6] Maintenance Spare Parts Demand Forecasting for Automobile 4S Shop Considering Weather Data
    Liu, Yang
    Zhang, Qi
    Fan, Zhi-Ping
    You, Tian-Hui
    Wang, Lu-Xin
    IEEE TRANSACTIONS ON FUZZY SYSTEMS, 2019, 27 (05) : 943 - 955
  • [7] Demand forecasting of spare parts with regression and machine learning methods: Application in a bus fleet
    Ifraz, Metin
    Aktepe, Adnan
    Ersoz, Suleyman
    cetinyokus, Tahsin
    JOURNAL OF ENGINEERING RESEARCH, 2023, 11 (02):
  • [8] Short-Term Electrical Load Demand Forecasting Based on LSTM and RNN Deep Neural Networks
    ul Islam, Badar
    Ahmed, Shams Forruque
    MATHEMATICAL PROBLEMS IN ENGINEERING, 2022, 2022
  • [9] Tourism demand forecasting: A deep learning approach
    Law, Rob
    Li, Gang
    Fong, Davis Ka Chio
    Han, Xin
    ANNALS OF TOURISM RESEARCH, 2019, 75 : 410 - 423
  • [10] Cardiac Arrhythmia Classification Using Cascaded Deep Learning Approach (LSTM & RNN)
    Maurya, Jay Prakash
    Manoria, Manish
    Joshi, Sunil
    MACHINE LEARNING, IMAGE PROCESSING, NETWORK SECURITY AND DATA SCIENCES, MIND 2022, PT I, 2022, 1762 : 3 - 13