Selection of construction equipment – excavators and dump trucks in terms of minimizing the emission of CO2 by using forecasting methods Cover Image

Dobór sprzętu budowlanego koparek i samochodów samowyładowczych w aspekcie minimalizacji emisyjności CO2 z wykorzystaniem metod prognostycznych
Selection of construction equipment – excavators and dump trucks in terms of minimizing the emission of CO2 by using forecasting methods

Author(s): Magdalena Rogalska
Subject(s): Geography, Regional studies
Published by: Biblioteka Politechniki Lubelskiej
Keywords: performance of excavators; CO2 emission; the method of multiple regression

Summary/Abstract: The article predicted CO2 emission by a set of machines: excavator and dump trucks. The emissivity of carbon dioxide during the execution of a specific work task depends on the performance of the machines. In the first stage, work performance of excavators was projected. The following technical and organisational data having a hypothetical influence on the performance of excavators were collected: bucket capacity, type of working tool, category of land, load capacity of a mean of transport, type of access road, work experience of an operator, humidity of the soil, distance of the soil disposal, air temperature, failure frequency. The linguistic variables were coded, the data was transformed in a way that ensures that the best results were obtained. The method of multiple regression were used for forecasting. Analysis of the autocorrelation and partial autocorrelation residues and sensitivity analysis was done. MAPE errors forecasts were calculated. On the basis of a predictive model, an example of calculation of selection of machines in terms of carbon dioxide emission was made. The calculation formula to quantify the number of kilograms of carbon dioxide produced during earthworks was formulated. Analyses showed that the criterion of minimizing carbon dioxide emissions are directly proportional to the excavator’s bucket capacity and capacity of means of transport.

  • Issue Year: 15/2016
  • Issue No: 1
  • Page Range: 133-142
  • Page Count: 10
  • Language: Polish