Publication detail

Heuristic challenges for spatially distributed waste production identification problems

NEVRLÝ, V. ŠOMPLÁK, R. POPELA, P. PAVLAS, M. OSIČKA, O. KŮDELA, J.

Original Title

Heuristic challenges for spatially distributed waste production identification problems

Type

journal article in Scopus

Language

English

Original Abstract

The aim of the paper is to present the advances in the development of optimization foundations of software tool Justine designed for the forecasting of spatially distributed waste production under incomplete, uncertain, and even contradictory information. Justine tool has been already successfully used for practical computations that serve for investment planning in the area of waste processing unit allocation and design. However, the experience with real-world oriented computations generates new modeling and algorithmic challenges linked to the future use of this tool. Specifically, the obtained data are related to the existing structure of regions and their subregions, and hence, because of various demographical, geographical, and industry related reasons, the data are often of various quality and heterogeneous nature from the quantitative point of view. Therefore, the computational model developed for Justine tool is modified to deal with possibility to reorganize the process of collecting and clustering data in such a way that a suitable regression-based criterion is minimized. Because of the presence of binary variables and the fact that their number is extremely large for the real-world data we suggest to implement a suitable heuristic. The paper introduces the first step in this direction and states a challenge to include more advanced heuristics in the future.

Keywords

waste management, waste production forecasting, spatially distributed data, heuristic challenges, Justine tool, least squares criterion, combinatorial optimization

Authors

NEVRLÝ, V.; ŠOMPLÁK, R.; POPELA, P.; PAVLAS, M.; OSIČKA, O.; KŮDELA, J.

Released

8. 6. 2016

Publisher

VUT

Location

Brno

ISBN

1803-3814

Periodical

Mendel Journal series

Year of study

2016

Number

1

State

Czech Republic

Pages from

109

Pages to

116

Pages count

8

BibTex

@article{BUT128210,
  author="Vlastimír {Nevrlý} and Radovan {Šomplák} and Pavel {Popela} and Martin {Pavlas} and Ondřej {Osička} and Jakub {Kůdela}",
  title="Heuristic challenges for spatially distributed waste production identification problems",
  journal="Mendel Journal series",
  year="2016",
  volume="2016",
  number="1",
  pages="109--116",
  issn="1803-3814"
}