Development of intelligent decision system for optimized highway corridor planning: an integrated GIS and heuristic approach
M.B. Sushma, S. Roy, A. Maji
Pages: 171-188
Abstract:
Highway corridor planning is a preliminary and primary step in the planning and development of highways where land parcels are demarcated to be subsequently surveyed for developing the final alignment. The traditional approach, where the experts study topographic, and land use maps to identify potential corridors, relies on human judgment and intuition and can either miss-select the best alternative or yield the best local corridors. This might result in developing sub-optimal highway alignments, thus affecting the highway development process. This paper proposes a Geographic Information Systems (GIS) integrated artificial intelligence-based heuristic optimization method to identify the highway corridor for a detailed alignment development. Using the Halton sequence-based low-discrepancy point sampling method, potential intermediate points are developed in a GIS map with land use, elevation, and cost information. Each segment, represented by an enclosed intermediate point, inherits the corresponding land parcel property, elevation, and environment-sensitive locations. Using the ant algorithm (AA), these segments are joined between the two desired locations to form a wide strip of land parcels representing the highway corridor. The efficacy of the proposed model is demonstrated in a real-world case study from the city of Pune, India, where the model yielded a corridor that avoided the environment-sensitive areas and had minimum cost. The method was also able to generate diverse alternative routes with comparable cost and impact, so the stakeholders can choose routes by varying corridor objectives. The analysis results also show that the right-of-way cost and impacted land parcels increased outside the boundary of the developed corridors. Overall, the proposed model can benefit the existing highway development policy by eliminating the repetitive and resource-intensive manual process, the resulting biases in identifying the survey areas, and explicitly specifying the corridor that might be explored for the optimized alignment design.
Keywords: GIS; Artificial Intelligence; Ant algorithm; highway corridor; Voronoi diagram; Halton sequence; highway alignment; optimized highway corridor planning
2025 ISSUES
2024 ISSUES
LXII - April 2024LXIII - July 2024LXIV - November 2024Special 2024 Vol1Special 2024 Vol2Special 2024 Vol3Special 2024 Vol4
2023 ISSUES
LIX - April 2023LX - July 2023LXI - November 2023Special Issue 2023 Vol1Special Issue 2023 Vol2Special Issue 2023 Vol3
2022 ISSUES
LVI - April 2022LVII - July 2022LVIII - November 2022Special Issue 2022 Vol1Special Issue 2022 Vol2Special Issue 2022 Vol3Special Issue 2022 Vol4
2021 ISSUES
LIII - April 2021LIV - July 2021LV - November 2021Special Issue 2021 Vol1Special Issue 2021 Vol2Special Issue 2021 Vol3
2020 ISSUES
2019 ISSUES
Special Issue 2019 Vol1Special Issue 2019 Vol2Special Issue 2019 Vol3XLIX - November 2019XLVII - April 2019XLVIII - July 2019
2018 ISSUES
Special Issue 2018 Vol1Special Issue 2018 Vol2Special Issue 2018 Vol3XLIV - April 2018XLV - July 2018XLVI - November 2018
2017 ISSUES
Special Issue 2017 Vol1Special Issue 2017 Vol2Special Issue 2017 Vol3XLI - April 2017XLII - July 2017XLIII - November 2017
2016 ISSUES
Special Issue 2016 Vol1Special Issue 2016 Vol2Special Issue 2016 Vol3XL - November 2016XXXIX - July 2016XXXVIII - April 2016
2015 ISSUES
Special Issue 2015 Vol1Special Issue 2015 Vol2XXXV - April 2015XXXVI - July 2015XXXVII - November 2015
2014 ISSUES
Special Issue 2014 Vol1Special Issue 2014 Vol2Special Issue 2014 Vol3XXXII - April 2014XXXIII - July 2014XXXIV - November 2014
2013 ISSUES
2012 ISSUES
2011 ISSUES
2010 ISSUES
2009 ISSUES
2008 ISSUES
2007 ISSUES
2006 ISSUES
2005 ISSUES
2004 ISSUES
2003 ISSUES