Knowledge
Integration to Make Decisions about Complex Systems: Sustainability of Energy
Production from Agriculture
Francesco
Danuso
University of Udine
A major bottleneck for improving the governance
of complex systems, rely on our ability to integrate different forms of
knowledge into a decision support system (DSS). Preliminary aspects are the
classification of different types of knowledge (a priori or general,
a posteriori or specific, with uncertainty, numerical, textual,
algorithmic, complete/incomplete, etc.), the definition of ontologies for
knowledge management and the availability of proper tools like continuous
simulation models, event driven models, statistical approaches, computational methods
(neural networks, evolutionary optimization, rule based systems etc.) and
procedure for textual documentation. Following
these views at University
of Udine, a computer
language (SEMoLa, Simple, Easy Modelling Language) for knowledge integration
has been developed. SEMoLa can handle models, data, metadata and textual
knowledge; it implements and extends the system dynamics ontology (Forrester,
1968; Jørgensen, 1994) in which systems are modelled by the concepts of
material, group, state, rate, parameter, internal and external events and
driving variables. As an example, a
SEMoLa model to improve management and sustainability (economical, energetic,
environmental) of the agricultural farms is presented. The model (X-Farm)
simulates a farm in which cereal and forage yield, oil seeds, milk, calves and
wastes can be sold or reused. X-Farm is composed by integrated modules
describing fields (crop and soil), feeds and materials storage, machinery
management, manpower management, animal husbandry, economic and energetic
balances, seed oil extraction, manure and wastes management, biogas production
from animal wastes and biomasses.