Copper Price Prediction Model for Various Economic Situations
Commenced in January 2007
Frequency: Monthly
Edition: International
Paper Count: 33122
Copper Price Prediction Model for Various Economic Situations

Authors: Haidy S. Ghali, Engy Serag, A. Samer Ezeldin

Abstract:

Copper is an essential raw material used in the construction industry. During 2021 and the first half of 2022, the global market suffered from a significant fluctuation in copper raw material prices due to the aftermath of both the COVID-19 pandemic and the Russia-Ukraine war which exposed its consumers to an unexpected financial risk. Thereto, this paper aims to develop two hybrid price prediction models using artificial neural network and long short-term memory (ANN-LSTM), by Python, that can forecast the average monthly copper prices, traded in the London Metal Exchange; the first model is a multivariate model that forecasts the copper price of the next 1-month and the second is a univariate model that predicts the copper prices of the upcoming three months. Historical data of average monthly London Metal Exchange copper prices are collected from January 2009 till July 2022 and potential external factors are identified and employed in the multivariate model. These factors lie under three main categories: energy prices, and economic indicators of the three major exporting countries of copper depending on the data availability. Before developing the LSTM models, the collected external parameters are analyzed with respect to the copper prices using correlation, and multicollinearity tests in R software; then, the parameters are further screened to select the parameters that influence the copper prices. Then, the two LSTM models are developed, and the dataset is divided into training, validation, and testing sets. The results show that the performance of the 3-month prediction model is better than the 1-month prediction model; but still, both models can act as predicting tools for diverse economic situations.

Keywords: Copper prices, prediction model, neural network, time series forecasting.

Procedia APA BibTeX Chicago EndNote Harvard JSON MLA RIS XML ISO 690 PDF Downloads 193

References:


[1] Alameer, Zakaria, Mohamed Abd Elaziz, Ahmed A. Ewees, Haiwang Ye, and Zhang Jianhua. “Forecasting Copper Prices Using Hybrid Adaptive Neuro-Fuzzy Inference System and Genetic Algorithms.” Natural Resources Research, vol. 28, no. 4, 11 Mar. 2019, pp. 1385–1401, https://doi.org/10.1007/s11053-019-09473-w.
[2] Alipour, Aref , Ali Asghar Khodaiari, and Ahmed Jafari. “Modeling and Prediction of Time-Series of Monthly Copper Prices.” International Journal of Mining and Geo-Engineering, vol. 53, no. 1, 2019, pp. 91–97, https://doi.org/10.22059/IJMGE.2019.242221.594699.
[3] Astudillo, Gabriel, Raul Carrasco, Christian Fernandez-Campusano, and Max Chacon. “Copper Price Prediction Using Support Vector Regression Technique.” Applied Sciences, vol. 10, no. 19, 23 Sept. 2020, p. 6648, https://doi.org/10.3390/app10196648.
[4] Atha, Katherine, et al. “China’s Smart Cities Development.” SOSi, Jan. 2020.
[5] Carrasco, Raul, et al. “Copper Price Variation Forecasts Using Genetic Algorithms.” International Conference on Applied Technologies, Springer Nature, 3 Mar. 2020, pp. 284–296.
[6] Carrasco, Raúl, et al. “Chaotic Time Series for Copper’s Price Forecast Neural Networks and the Discovery of Knowledge for Big Data.” IFIP International Federation for Information Processing, Springer International Publishing, 2018, pp. 278–288.
[7] Chai, T., and R. R. Draxler. “Root Mean Square Error (RMSE) or Mean Absolute Error (MAE)? – Arguments against Avoiding RMSE in the Literature.” Geoscientific Model Development, vol. 7, no. 3, 30 June 2014, pp. 1247–1250, https://doi.org/10.5194/gmd-7-1247-2014.
[8] Copper Alliance. “Copper: An Essential Resource - Copper Alliance.” Https://Copperalliance.org/, International Copper Association, copperalliance.org/sustainable-copper/about-copper/copper-an-essential-resource/. Accessed 20 July 2023.
[9] Dehghani, H. “Forecasting Copper Price Using Gene Expression Programming.” JME Journal of Mining & Environment, vol. 9, no. 2, 2018, pp. 349–360, jme.shahroodut.ac.ir/article_1075_be3e920cad8f68772bee23407e481805.pdf, https://doi.org/10.22044/jme.2017.6195.1435.
[10] Di Mauro, Beatrice Weder . “Macroeconomics of the Flu.” Economics in the Time of COVID-19, London, Centre for Economic Policy Research, 2020, pp. 38–42, cepr.org/system/files/publication-files/60120-economics_in_the_time_of_covid_19.pdf. Accessed 21 July 2023.
[11] Díaz, Juan D., Erwin Hansen, and Gabriel Cabrera. “A Random Walk through the Trees: Forecasting Copper Prices Using Decision Learning Methods.” Resources Policy, vol. 69, Dec. 2020, p. 101859, https://doi.org/10.1016/j.resourpol.2020.101859.
[12] European Central Bank. “Financial Stability Review May 2022.” May 2022.
[13] Fan, Ryan Y.C., S. Thomas Ng, and James M.W. Wong. “Reliability of the Box–Jenkins Model for Forecasting Construction Demand Covering Times of Economic Austerity.” Construction Management and Economics, vol. 28, no. 3, Mar. 2010, pp. 241–254, https://doi.org/10.1080/01446190903369899.
[14] finanzen.net GmbH. “Copper PRICE Today | Copper Spot Price Chart | Live Price of Copper per Ounce | Markets Insider.” Markets.businessinsider.com, 2020, markets.businessinsider.com/commodities/copper-price. Accessed 30 Aug. 2022.
[15] Gagnon, Joseph E., Steven B. Kamin, and John Kearns. “The Impact of the COVID-19 Pandemic on Global GDP Growth.” Journal of the Japanese and International Economies, vol. 68, Mar. 2023, p. 101258, https://doi.org/10.1016/j.jjie.2023.101258.
[16] Garg, Akhil, and Kang Tai. “Comparison of Statistical and Machine Learning Methods in Modelling of Data with Multicollinearity.” International Journal of Modelling, Identification and Control, vol. 18, no. 4, 2013, p. 295, https://doi.org/10.1504/ijmic.2013.053535.
[17] Garside, M. “Copper Mine Production Worldwide Total 2021.” Statista, 7 Feb. 2023, www.statista.com/statistics/254839/copper-production-by-country/#:~:text=The%20total%20worldwide%20copper%20mine. Accessed 5 Aug. 2023.
[18] Garside, M. “Copper Usage Globally 2019.” Statista, 9 Nov. 2022, www.statista.com/statistics/267849/global-copper-consumption/. Accessed 5 Aug. 2023.
[19] Ghali, Haidy S., Engy Serag, and A. Samer Ezeldin. “Price Prediction Models of Metals Considering International Crises (Unpublished work style),” unpublished.
[20] Ghali, Haidy S., Engy Serag, and A. Samer Ezeldin. “Price Prediction Models of Steel Rebar Considering International Crises (Periodical style—Submitted for publication).” Journal of Construction Engr. & Management, submitted for publication.
[21] Hu, Yan, Jian Ni, and Liu Wen. “A Hybrid Deep Learning Approach by Integrating LSTM-ANN Networks with GARCH Model for Copper Price Volatility Prediction.” Physica A: Statistical Mechanics and Its Applications, vol. 557, 1 Nov. 2020, p. 124907, www.sciencedirect.com/science/article/pii/S0378437120304696, https://doi.org/10.1016/j.physa.2020.124907.
[22] IDTechEx. “The Electric Vehicle Market and Copper Demand.” International Copper Association, 2017.
[23] International Energy Agency. “Global EV Outlook 2023.” International Energy Agency, 2023, www.iea.org/reports/global-ev-outlook-2023/trends-in-electric-light-duty-vehicles. Accessed 20 July 2023.
[24] International Energy Agency. “The Role of Critical World Energy Outlook Special Report Minerals in Clean Energy Transitions.” International Energy Agency, May 2021.
[25] International Monetary Fund. “ IMF Data Aces to Macroeconomic & Financial Data.” Data.imf.org, 2022, data.imf.org/?sk=388DFA60-1D26-4ADE-B505-A05A558D9A42. Accessed 30 Aug. 2022.
[26] IQS Directory. “Copper Metal: Types, Uses, Features and Benefits.” Www.iqsdirectory.com, www.iqsdirectory.com/articles/copper.html. Accessed 20 July 2023.
[27] Jain, Sukirty, Sanyam Shukla, and Rajesh Wadhvani. “Dynamic Selection of Normalization Techniques Using Data Complexity Measures.” Expert Systems with Applications, vol. 106, Sept. 2018, pp. 252–262, https://doi.org/10.1016/j.eswa.2018.04.008.
[28] Khoshalan, Hasel Amini, Jamshid Shakeri, Iraj Najmoddini, and Mostafa Asadizadeh. “Forecasting Copper Price by Application of Robust Artificial Intelligence Techniques.” Resources Policy, vol. 73, 1 Oct. 2021, pp. 102239–102239, https://doi.org/10.1016/j.resourpol.2021.102239.
[29] Kim, Sungil, and Heeyoung Kim. “A New Metric of Absolute Percentage Error for Intermittent Demand Forecasts.” International Journal of Forecasting, vol. 32, no. 3, July 2016, pp. 669–679, www.sciencedirect.com/science/article/pii/S0169207016000121, https://doi.org/10.1016/j.ijforecast.2015.12.003.
[30] Lasheras, Fernando Sánchez, Francisco Javier de Cos Juez, Ana Suárez Sánchez, Alicja Krzemień, and Pedro Riesgo Fernández. “Forecasting the COMEX Copper Spot Price by Means of Neural Networks and ARIMA Models.” Resources Policy, vol. 45, Sept. 2015, pp. 37–43, https://doi.org/10.1016/j.resourpol.2015.03.004.
[31] Li, Fei, Hanlu Zhou, Min Liu, and Leiming Ding. “A Medium to Long-Term Multi-Influencing Factor Copper Price Prediction Method Based on CNN-LSTM.” IEEE Access, IEEE, 22 June 2023, pp. 69458–69473.
[32] Liu, Chang, Zhenhua Hu, and Shaojum Liu. “Forecasting Copper Prices by Decision Tree Learning.” Resources Policy, vol. 52, June 2017, pp. 427–434, https://doi.org/10.1016/j.resourpol.2017.05.007.
[33] Liu, Kailei, Jinhua Cheng, and Jiahui Yi. "Copper price forecasted by hybrid neural network with Bayesian Optimization and wavelet transform." Resources Policy 75 (2022): 102520.
[34] Liu, Yishun, Chunhua Yang, Keke Huang, and Weihu Gui. “Non-Ferrous Metals Price Forecasting Based on Variational Mode Decomposition and LSTM Network.” Knowledge-Based Systems, vol. 188, Jan. 2020, p. 105006, https://doi.org/10.1016/j.knosys.2019.105006.
[35] LME. “LME Copper Contract Specifications.” LME, 2023, www.lme.com/Metals/Non-ferrous/LME-Copper/Contract-specifications.
[36] Luo, Hongyuan, Deyun Wang, Jinjua Cheng, and Qiaosheng Wu. “Multi-Step-Ahead Copper Price Forecasting Using a Two-Phase Architecture Based on an Improved LSTM with Novel Input Strategy and Error Correction.” Resources Policy, vol. 79, Dec. 2022, p. 102962, https://doi.org/10.1016/j.resourpol.2022.102962.
[37] Majuba Hill Copper. “Copper in Electric Vehicles.” Majuba Hill Copper, 19 Jan. 2022, www.majubahillcopper.com/copper-in-electric-vehicles/#:~:text=Copper%20is%20significantly%20used%20in.
[38] Market Insider. “Crude Oil Price Today | WTI OIL PRICE CHART | OIL PRICE per BARREL | Markets Insider.” Markets.businessinsider.com, 27 Aug. 2022, markets.businessinsider.com/commodities/oil-price?type=wti%20target=. Accessed 30 Aug. 2022.
[39] Martech, Metra. “Megatrends to Increase Copper Demand.” Apr. 2021.
[40] 36 Masayoshi, Amamiya. “The COVID-19 Crisis and Inflation Dynamic.” Bank of Japan, 29 Mar. 2022.
[41] OEC. “Copper Ores and Concentrates.” OEC - the Observatory of Economic Complexity, 2021, oec. world/en/profile/hs/copper-ore#:~:text=Copper%20Ore%20are%20the%20world. Accessed 4 Aug. 2023.
[42] Rate Inflation. “Inflation Rates and CPI.” Www.rateinflation.com, 2022, www.rateinflation.com/. Accessed 30 Aug. 2022.
[43] Rubaszek, Michał, Zuzanna Karolak, and Marek Kwas. “Mean-Reversion, Non-Linearities and the Dynamics of Industrial Metal Prices. A Forecasting Perspective.” Resources Policy, vol. 65, Mar. 2020, p. 101538, https://doi.org/10.1016/j.resourpol.2019.101538.
[44] Sarmento, David. “Chapter 22: Correlation Types and When to Use Them.” Ademos.people.uic.edu, University of Illinois at Chicago, 2022, ademos.people.uic.edu/Chapter22.html.
[45] Trading Economics. “Copper.” Tradingeconomics.com, 2023, tradingeconomics.com/commodity/copper. Accessed 22 July 2023.
[46] Vochozka, Marek, Eva Kalinova, Peng GAO, and Lenka Smolikova. “Development of Copper Price from July 1959 and Predicted Development till the End of Year 2022.” Acta Montanistica Slovaca, no. 26, 19 Aug. 2021, pp. 262–280, https://doi.org/10.46544/ams.v26i2.07.
[47] Wang, Chao, Xinyi Zhang, Minggang Wang, Ming K. Lim, and Pezhman Ghadimi. “Predictive Analytics of the Copper Spot Price by Utilizing Complex Network and Artificial Neural Network Techniques.” Resources Policy, vol. 63, Oct. 2019, p. 101414, https://doi.org/10.1016/j.resourpol.2019.101414.
[48] World Group Bank. “April 2022 - Commodity Markets Outlook - the Impact of War in Ukraine on Commodity Markets.” Apr. 2022.
[49] World Bank Group. “April 2023 Commodity Markets Outlook Lower Prices, Little Relief.” World Bank Group, Apr. 2023.
[50] Zhang, Hong, Hoang Nguyen, Diep-Anh Vu, Xuan-Nam Bui, and Biswajeet Pradhan. “Forecasting Monthly Copper Price: A Comparative Study of Various Machine Learning-Based Methods.” Resources Policy, vol. 73, Oct. 2021, p. 102189, https://doi.org/10.1016/j.resourpol.2021.102189.