This powerpoint presentation talks about natural gas leak detection system using AI. The AI involve here includes fuzzy logic, genetic algorithm and neural networks
Simulation of Natural Gas leak detection system using AI
1. Natural Gas Leak Detection System
using AI: Fuzzy Logic, Neural
Network,GA
By: Edgar Caburatan Carrillo II
Master of Science in Mechanical Engineering
De La Salle University Manila, Philippines
9. 1. Fuzzy Logic
Fuzzy logic is a form of many-valued logic; it deals with
reasoning that is approximate rather than fixed and exact.
Compared to traditional binary sets, fuzzy logic variables
may have a truth value that ranges in degree between 0 and
1.
10. 2. Neural Networks
In computer science and related fields, artificial neural
networks are computational models inspired by an animal's
central nervous systems which is capable of machine
learning as well as pattern recognition.
11. 3. Genetic Algorithm
In the computer science field of artificial intelligence, genetic
algorithm is a search heuristic that mimics the process of
natural selection. This heuristic is routinely used to generate
useful solutions to optimization and search problems
12. When GA is applied to a problem:
Following must be addressed:
1. How to represent the individual? ( Genetic Algorithm
Structure)
2. What is the fitness function? ( to measure the
performance of each individual)
3.What is the criterion for selection? ( best or fittest
individuals in the population)
4. How to end the search? ( loop termination condition)
15. Conclusion
In our Discussion, we are able to learn:
1.Natural gas pipeline system
2. Fuzzy logic
3. Neural Networks
4. Genetic Algorithm
5. GAApplication
16. 7. References
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[3] http://www3.imperial.ac.uk/aboutimperial
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[7] http://rspa.royalsocietypublishing.org/content/464/2096/2219.full
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17. References
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