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Development of a Decision Support Methodology for the Design of Animal Waste Management Strategies to Achieve Regional Environmental Objectives

Management of waste from confined animal feeding operations is becoming increasingly important. While anaerobic lagoons and sprayfields are currently used for treatment, recent administrative initiatives call for their replacement. This decision has increased the need for characterization of the cost and treatment effectiveness of alternative technologies. However, due to variations in farm characteristics (e.g., size, location), identification of the most cost-effective combination of treatment technologies to achieve collective environmental goals requires an integrated approach (i.e. all combinations of treatment technology alternatives at all farms in a region must be considered simultaneously). The objective of this research was to develop a regional management decision-support framework to assist policy-makers, planners, and farmers in making cost effective lagoon replacement decisions to achieve desired treatment and public protection goals. A major component of the framework is a cost and treatment efficiency assessment tool to evaluate alternative animal waste treatment technologies for individual farms. Outputs from the assessment tool, together with geospatial data, feed into the regional management component of the framework, which consists of several formal optimization techniques that assist in the search for good decisions. Among these techniques are an optimization engine (integer programming) that can be used to find management strategies that meet cost and environmental targets, and a method for efficiently generating alternatives (Modeling to Generate Alternatives (MGA)). The management alternatives have similar cost and environmental performance but may behave differently for unmodeled objectives (e.g., risk or equity). Finally, the regional management framework includes an uncertainty analysis component that allows the evaluation of alternatives while taking into consideration the uncertainty in model inputs. The decision-support framework was demonstrated through an illustrative example; the regional waste management of swine farms in the Lower Neuse River watershed in eastern North Carolina to achieve a 30% reduction in nitrogen loading. Results show that 1) a regional management approach is essential for achieving cost savings, 2) there is significant flexibility in meeting the nitrogen reduction and cost targets, 3) consideration of uncertainty may lead to the selection of a different solution, 4) the decision support framework can be used successfully to address a range of concerns, including but not limited to cost, risk, equity, and uncertainty.

Identiferoai:union.ndltd.org:NCSU/oai:NCSU:etd-11062002-210908
Date03 December 2002
CreatorsAnastasiou, Christos Charalambou
ContributorsS. Ranji Ranjithan, Sarah K. Liehr, John J. Classen, E. Downey Brill, Francis de los Reyes
PublisherNCSU
Source SetsNorth Carolina State University
LanguageEnglish
Detected LanguageEnglish
Typetext
Formatapplication/pdf
Sourcehttp://www.lib.ncsu.edu/theses/available/etd-11062002-210908/
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