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  4. Biomass Price Prediction Based on the Example of Poland
 
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Biomass Price Prediction Based on the Example of Poland

Type
Journal article
Language
English
Date issued
2022
Author
Górna, Aleksandra Katarzyna 
Wieruszewski, Marek 
Szabelska-Beręsewicz, Alicja 
Stanula, Zygmunt
Adamowicz, Krzysztof 
Faculty
Wydział Leśny i Technologii Drewna
Wydział Rolnictwa, Ogrodnictwa i Bioinżynierii
Journal
Forests
ISSN
1999-4907
DOI
10.3390/f13122179
Web address
https://www.mdpi.com/1999-4907/13/12/2179
Volume
13
Number
12
Pages from-to
art. 2179
Abstract (EN)
The aim of the study was to test the applicability of forecasting in the analysis of the variability of prices and supply of wood in Poland. It relies on the autoregressive integrated model (ARIMA) that takes into account the level of cyclic, seasonal, and irregular fluctuations and the long-term trend as tools for the assessment of the predictions of the prices of selected medium-sized wood assortments. Elements of the time series were determined taking into account the cyclical character of the quarterly distribution. The data included quarterly information about the supply (amount) and prices (value) of wood sold by state forests in the years 2018–2022. The analysis was conducted for the most popular assortments: logging slash (M2, M2ZE), firewood S4, and medium-sized wood S2AP. In the period studied (years 2018–2022), the average rate of price variation was widely scattered. The average rate of price variation for the M2ZE assortment amounted to 7%. The average rate for M2 assortment was 1%, while the medium-sized S2AP assortment displayed the greatest variation of 99%. This means that between 2018 and the present, the price increased by nearly 100%. No major fluctuations were observed for the S4 assortment and its average rate of variation amounted to 0%. The analysis found seasonal variation was observed only for S4 firewood, the price of which went up each year in October, November, and December. For this reason, the forecast was made with the seasonal autoregressive integrated moving average (SARIMA) version of the model. It is difficult to forecast the price of wood due to variations in the market and the impact of global factors related to fluctuations in supply.
Keywords (EN)
  • wood market

  • wood prices

  • forecasting

  • seasonality of supply

  • slash

  • pulpwood

  • ARIMA

  • SARIMA

License
cc-bycc-by CC-BY - Attribution
Open access date
December 19, 2022
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