Urban Fire Station Location Planning: A Systematic Approach using
Predicted Demand and Service Quality Index
- URL: http://arxiv.org/abs/2109.02160v1
- Date: Sun, 5 Sep 2021 19:59:26 GMT
- Title: Urban Fire Station Location Planning: A Systematic Approach using
Predicted Demand and Service Quality Index
- Authors: Arnab Dey, Andrew Heger and Darin England
- Abstract summary: We develop a machine learning model, based on Random Forest, for demand prediction.
We utilize the model to define a generalized index to measure quality of fire service in urban settings.
We aid Victoria Fire Department to select a location for a new fire station using our approach.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In this article, we propose a systematic approach for fire station location
planning. We develop a machine learning model, based on Random Forest, for
demand prediction and utilize the model further to define a generalized index
to measure quality of fire service in urban settings. Our model is built upon
spatial data collected from multiple different sources. Efficacy of proper
facility planning depends on choice of candidates where fire stations can be
located along with existing stations, if any. Also, the travel time from these
candidates to demand locations need to be taken care of to maintain fire safety
standard. Here, we propose a travel time based clustering technique to identify
suitable candidates. Finally, we develop an optimization problem to select best
locations to install new fire stations. Our optimization problem is built upon
maximum coverage problem, based on integer programming. We present a detailed
experimental study of our proposed approach in collaboration with city of
Victoria Fire Department, MN, USA. Our demand prediction model achieves true
positive rate of 70% and false positive rate of 22% approximately. We aid
Victoria Fire Department to select a location for a new fire station using our
approach. We present detailed results on improvement statistics by locating a
new facility, as suggested by our methodology, in the city of Victoria.
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