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Raimo P. Hämäläinen Juha Mäntysaari

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1 Raimo P. Hämäläinen Juha Mäntysaari
A Dynamic Interval Goal Programming Approach to the Regulation of a Lake-River System Raimo P. Hämäläinen Juha Mäntysaari Systems Analysis Laboratory Helsinki University of Technology S ystems Analysis Laboratory Helsinki University of Technology

2 Päijänne-Kymijoki lake river system
KONNIVESI RUOTSALAINEN RIVER KYMIJOKI 10 20 30 40 50 km Jyväskylä PYHÄJÄRVI Lahti Kotka Finland

3 Päijänne-Kymijoki lake river system
4:th largest in Finland Control: Outflow from Päijänne to the river Kymijoki Inflows: forecasted Regulation policies: Water levels at six time points

4 Need for modelling Development of feasible regulation strategies is a dynamic control problem No intuitive solutions Planning againts long historical inflow data Analysis of regulation impacts Many interest groups multicriteria optimization in a dynamic system

5 Goals in terms of water levels
Users give desired water levels at: six different points during one year ideal level + acceptable interval (min, max)

6 Constraints Max change in outflow: Outflow from Päijänne: Min/max flow
Fixed and hard Max change in outflow: Soft, violation penalties Water level in the lake Pyhäjärvi: Fixed rule based regulation Part of the dynamics

7 Criteria and penalty functions
Criterion for goal levels: Quadratic cost for differences of goal points from regulated water levels Penalty outside the goal interval: Quadratic difference from the limits (min or max) Penalty for violation of change in outflow rate: Quadratic cost outside the maximum flow limit, otherwise zero

8 Criteria and penalty functions
Cost function minimized = Sum of deviations from goal + penalty outside goal intervals

9 Model assumptions Lake dynamics
Optimization against one to four year history Lower dam regulation by a given rule Regulator uses a rolling two goal optimization principle Adjustment rules

10 Generation of the optimal regulation strategy

11 Goal programming Goal (infeasible point)
d Goal point/set cost function Goal programming Goal (infeasible point) Problem: Find a point in the feasible set closest to the goal point/set Weighted, Min Max, Lexicographic Aspects in regulation: Dynamic problem Goal interval (set)

12 Why goal programming ? Economic, social and environmental impacts 37 primary + 20 secondary = 57 different impacts For example: Power production, flood damages, number of destroyed loon nests Some impacts are interdependent: energy produced and the value of energy Use of tradeoff comparison questions or criteria classification becomes difficult

13 ISMO spreadsheet application

14 ISMO spreadsheet application
Minimizes deviations from goal levels and goal intervals Satisfies flow constraints Simulates the regulator’s operating principles Preference model Set of goal levels + acceptability intervals Optimization againts history data for a selected one to four year period Modifiable parameters Flow constraints in the river steepness of the penalty function

15 Use of ISMO

16 ISMO example

17 Inflow

18 Utopia and realistic solutions

19 Utopia and realistic solutions

20 Impacts Nature Social Economic Spawning areas for pike fish
Water level when ice melts number of destroyed loon nests Social Recreational losses Professional fishing: Reduction of the water level during 10-Dec and 28-Feb Economic Power production Flood damages Days infavourable for log floating

21 Comparison of impacts:
User evaluates and modifies goal levels

22 Spreadsheet modelling works !
ISMO is implemented in MS Excel 7.0 (MS Office 95) Solver provides optimization routines 10-20 minutes for one solution Benefits Rapid development Easy: data input, model modification, visualisation and printing Users accept easily Excel is a commonly used office program

23 Added value Generation of alternative regulation strategies
Impact tables of regulation a key info material in decision analysis interviews and conferences Sensitivity tool individual changes for water levels and related impacts helps representatives to better understand the restrictions of the system

24 Further development Different information patterns
Iterative optimization of the goal levels to produce maximum amount/value of the energy Now used to develop new regulation policies and their impacts

25 References www.paijanne.hut.fi
Marttunen, M., Järvinen, E. A., Saukkonen, J. and Hämäläinen, R. P., “Regulation of Lake Päijänne - a Learning Process Preceding Decision-Making”, Finnish Journal of Water Economy, 6:29-37, 1999. Hämäläinen, R. P., Kettunen, E., Marttunen, M. and Ehtamo, H., “Evaluating a framework for multi-stakeholder decision support in water resources management”, Manuscript, (Downloadable from Hämäläinen, R. P. and Mäntysaari, J., “A Dynamic Interval Goal Programming Approach the Regulation of a Lake-River System”, Manuscript, (Downloadable from Publications/pdf-files/mhama.pdf) Hämäläinen, R. P., “Interactive Multiple Criteria Decision Analysis in Water Resources Planning”, Home pages of the Lake Päijänne project, 1998,


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