A Parallel Novelty Search Metaheuristic Applied to a Wildfire Prediction System

07/24/2022
by   Jan Strappa, et al.
0

Wildfires are a highly prevalent multi-causal environmental phenomenon. The impact of this phenomenon includes human losses, environmental damage and high economic costs. To mitigate these effects, several computer simulation systems have been developed in order to predict fire behavior based on a set of input parameters, also called a scenario (wind speed and direction; temperature; etc.). However, the results of a simulation usually have a high degree of error due to the uncertainty in the values of some variables, because they are not known, or because their measurement may be imprecise, erroneous, or impossible to perform in real time. Previous works have proposed the combination of multiple results in order to reduce this uncertainty. State-of-the-art methods are based on parallel optimization strategies that use a fitness function to guide the search among all possible scenarios. Although these methods have shown improvements in the quality of predictions, they have some limitations related to the algorithms used for the selection of scenarios. To overcome these limitations, in this work we propose to apply the Novelty Search paradigm, which replaces the objective function by a measure of the novelty of the solutions found, which allows the search to continuously generate solutions with behaviors that differ from one another. This approach avoids local optima and may be able to find useful solutions that would be difficult or impossible to find by other algorithms. As with existing methods, this proposal may also be adapted to other propagation models (floods, avalanches or landslides).

READ FULL TEXT
research
04/18/2017

Discovering Evolutionary Stepping Stones through Behavior Domination

Behavior domination is proposed as a tool for understanding and harnessi...
research
04/11/2013

Evolution of Swarm Robotics Systems with Novelty Search

Novelty search is a recent artificial evolution technique that challenge...
research
07/02/2014

Novelty Search in Competitive Coevolution

One of the main motivations for the use of competitive coevolution syste...
research
02/10/2020

Novelty Producing Synaptic Plasticity

A learning process with the plasticity property often requires reinforce...
research
03/21/2020

Novelty search employed into the development of cancer treatment simulations

Conventional optimization methodologies may be hindered when the automat...
research
06/07/2019

Enhanced Optimization with Composite Objectives and Novelty Pulsation

An important benefit of multi-objective search is that it maintains a di...
research
06/24/2021

Adaptive Relaxations for Multistage Robust Optimization

Multistage robust optimization problems can be interpreted as two-person...

Please sign up or login with your details

Forgot password? Click here to reset