DEVELOPMENT OF A PROBABILISTIC PERFORMANCE ASSESSMENT MODEL TO SUPPORT ENVIRONMENTAL DECISION MAKING
Through probabilistic modeling, a more thorough and honest estimate of risks can be offered to the decision maker and the public. This probabilistic result represents the state of knowledge about the site and its behavior. The decision makers job may seem more difficult (more difficult than comparing two values) but in fact he is empowered by a greater appreciation for the uncertainties present in the conceptualization of the site and in its analysis. The decision maker is also provided with information related to the chance of making the wrong decision.
When probabilistic modeling is coupled with subsequent multivariate sensitivity analysis a more powerful tool emerges. This analysis can identify which parts of the model are most significant to the results in question. This information can help to guide further investigation to be the most effective at reducing uncertainties should they be uncomfortably large.
This presentation demonstrates a generic radiological performance assessment model (e.g. for shallow land burial of low-level radioactive waste) built using the GoldSim probabilistic systems analysis programming platform. The model considers typical stochastically-defined performance assessment input parameters and processes, and produces probabilistic results ready for a sensitivity analysis. Similar models are in use at existing low-level waste sites, and not only assess regulatory compliance, but are used to inform operational decisions such as the acceptance of candidate waste streams.