Abstract:
Agent Based Modeling of Seismic Time Series Data
Earthquake activities are taking place all around the globe. Latest disastrous series
of earthquakes in Nepal in April and May 2015, earthquakes in Pakistan during October
2005 and 2015, and various other large events serve as ruling reasons to investigate the
causes of these dangers. After every such disaster, a new chapter of research is opened.
Predicting such events has always been a complicated task as it involves many
underlying systems. The prediction itself does not reduce the chances of earthquakes but
yields alarms before the danger. Prediction alarms can save precious lives and unfurl
sense of preparation among people. This work is an endeavor in this regard. With the
novelty of approaches using Multi-Agent Systems (MAS) with other models; like, Swarm
Intelligence and Poisson distribution, future earthquakes are analyzed. Recent research
shows uses of Intelligent Agents for the prediction of ecosystem management, forecasting
and scheduling of aero engine overhaul and analysis and prediction of natural resource
management. Several authors applied evolutionary techniques like Particle Swarm
Optimization, Neural Networks and Genetic Algorithms for earthquake prediction and
analysis.
In this thesis, Multi-Agent based Prediction Model (MAP) is developed with the
statistically inferred rules and reasoning. MAP does not only help to predict the nature of
future events but also has the capability of real world phenomenon modeling. Scientific
explanations for earthquakes, which needed expensive infrastructure and equipment
before, can be visualized as Intelligent Agents (IA) with associated behavior and learning
capability. This work elaborates various uses of Multi-Agents along with time series data
of earthquake events. Algorithms used in the conjugation of Multi-Agents are Bare Bone
Particle Swarm Optimization (BPSO), Poisson distribution, and statistically inferred
rules. Several new parameters are introduced to work with the Multi-Agents.
Shape and distance parameters are used with latitude and longitude based MAP
resulting 93.1% accurate prediction. Data from United States Geological Survey (USGS),
Advanced National Seismic System (ANSS) have been used for analyses. The behavior
of each agent is designed based upon statistically inferred results. The relationship
between statistical inference and visually scaled parameters is drawn. The prediction
system resembles real world scenarios. Higher and medium intensity earthquakes are
predicted. In another technique, Enhanced version of BPSO is proposed as EBPSO to
work with MAS. Different parameters tested though EBPSO are depth, magnitude with
respect to time, magnitude sorted in the order of latitude and longitude and day difference
between consecutive earthquakes. Results obtained from EBPSO are later analyzed using
IA. High-risk and Low-risk areas are identified using this model. Using the Gaussian
distribution of BPSO with standard error adjustment, 91-98% prediction accuracy is
achieved for different parameters.
Another technique, Poisson distribution of magnitude on latitude and longitude is
calculated. Later, agents are designed to work on the results of Poisson distribution to
sense the neighboring areas. This technique also yielded 93% optimum results on high
x
intensity. Then, correlation between several formal and novel parameters is investigated
to identify dangerous areas.
In short, MAP outperformed the existing techniques to draw a conceptual
relationship between different parameters. Experiments show that EBPSO has high
accuracy rate as compared to others similar techniques. Poisson distribution used with IA
gives the likeliness of high and medium intensities.