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Chang’an University, Xi’an, China
DISCUSSION OF MULTI-OBJECTIVE OPTIMIZATION IN DECISION MAKING IN TRANSPORT INFRASTRUCTURE ASSEST MANAGEMENT Lin CHEN Chang’an University, Xi’an, China July 12, 2017
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University of Auckland
About me Chang’an University China University of Auckland New Zealand I spent 4 years in University of Auckland to pursue my phd. Then after the graduation, I came back to my hometown Xi’an and now I work at Chang’an university
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University of Pretoria
About me University of Pretoria South Africa This month, I’m so lucky to come to the university of pretoria for a one-month post-doc program on big data analysing and mining.
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Content 1. Road Development in China
2. Infrastructure Asset Management 3. Decision Making 4. Multi-Objective Optimization
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1. Road Development in China
History: 1949: 1980s: Management department Laws Lower classes of highways Medium and high classes of highways In 1949 when our country is established, we also start an new era on our road. In 1980s, we noticed the importance of higher classes of highways and put our effort on it.
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Expressway Development in China
1. Road Development in China Just like Mr Kevin Wall told me a month ago, other countries are developing but we are running. In 25 years we built a huge number of expressway Expressway Development in China
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Main Road Networks in China
1. Road Development in China 4.69 million km And now we have built a very good road network Then what? Main Road Networks in China
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2. Transport Infrastructure Asset Management
When should we apply treatments and what kind of treatment should we use? What & When?
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2. Transport Infrastructure Asset Management
efficiently manage a road network in order to achieve goals and requirements What treatments should be used? When should I apply the treatment? How to implement those treatment? What are the outcomes of my management? When should you apply treatment, what treatment should you choose, how to implement these treatments and the reason of that.
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3. Decision Making Decision Making (DM)
attempts to identify the proper strategies for an infrastructure asset network Strategies Strategy Index Analysis period 2017 2018 2019 ● ● ● 1 Treatment 1 2 Treatment 2 3 4 Treatment 3 ● ● ●
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3. Decision Making Decision Making (DM)
attempts to identify the proper strategies for an infrastructure asset network Each solution represent a selection of strategies
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3. Decision Making Decision Making (DM)
attempts to identify the proper strategies for an infrastructure asset network Cost
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3. Decision Making Decision Making (DM)
attempts to identify the proper strategies for an infrastructure asset network Condition
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? 3. Decision Making Decision Making (DM)
attempts to identify the proper strategies for an infrastructure asset network ? Condition Cost
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Multi-Objective Optimisation
3. Decision Making Decision Making (DM) A wide range of considerations A large number of segments and strategies Conflicting goals A number of requirements Subjectivities Various variables Powerful & cheap computing power Multiple objectives Multiple constraints No expert experience needed Multi-Objective Optimisation (MOO)
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4. Multi-Objective Optimization
Multi-Objective Optimisation (MOO) describes Multi-Objective Decision Making more practically and rational, especially when objectives cannot be reasonably aggregated into a single objective.
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Best possible solutions
4. Multi-Objective Optimization Multi-Objective Optimisation (MOO) - Abilities Pareto solutions: Best possible solutions
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Best achievable outcomes
4. Multi-Objective Optimization Multi-Objective Optimisation (MOO) - Abilities Best achievable outcomes
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4. Multi-Objective Optimization
Multi-Objective Optimisation (MOO) - Abilities Outcome relationship Outcome trade-offs
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4. Multi-Objective Optimization
Multi-Objective Optimisation (MOO) - Abilities Outcome relationship Outcome trade-offs
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4. Multi-Objective Optimization
MOO has the potentials to help with decision making in TIAM What are the applicable methods? Which one is suitable for my problem? How to implement it? What are the applicable methods? Which one is suitable for my problem? How to use it?
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4. Multi-Objective Optimization
Weighted Sum Method (WSM) Dichotomic Approach (DA) Epsilon Constraint method (ECM) Revised Normal Boundary Intersection (RNBI) Genetic Algorithm (GA) Nondomianted Sorting Genetic Algorithm II (NSGA II) Simulated Annealing (SA) Tabu Search (TS) Ant Colony Optimization (ACO) Particle Swarm Optimization (PSO) Exact method Case Study Heuristic
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Comparison of MOO methods
4. Multi-Objective Optimization Comparison of MOO methods Criterion WSM DA ECM RNBI GA NSGA II SA TS ACO PSO Type exact method heuristic Objectives √ 2 Constraints type hardness Large size Solutions distribution quality & distribution Speed depends controllable & slow Implementation theory & math framework
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4. Multi-Objective Optimization
Solution Quality
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Solution Distribution
4. Multi-Objective Optimization Solution Distribution Good distribution Poor distribution
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Comparison of MOO methods
4. Multi-Objective Optimization Comparison of MOO methods Criterion WSM DA ECM RNBI GA NSGA II SA TS ACO PSO Type exact method heuristic Objectives √ 2 Constraints type hardness Large size Solutions distribution quality and distribution Speed depends controllable & slow Implementation theory & math framework
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Thank you!
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