• Aucun résultat trouvé

BDI agents in social simulations: a survey

N/A
N/A
Protected

Academic year: 2021

Partager "BDI agents in social simulations: a survey"

Copied!
28
0
0

Texte intégral

Loading

Figure

Table 1: Summary of benefits and drawbacks of BDI architecture w.r.t. agents characteristics (learning will be discussed in Section 3.5.4)
Table 2: Summary of interests of BDI w.r.t. agents characteristics
Table 4 considers all the platforms that have been compared in [86] and detail how they support BDI agents.

Références

Documents relatifs

This paper presents an approach, based on system dynamics and agent-based modeling, to model the emotional state of an individual member of the network (via a

Julie Dugdale is an associate professor (HDR) at the University of Grenoble Alps, France, and leader of the MAGMA, multi-agent systems research team at the Grenoble

In this paper, we propose a new cognitive agent architecture based on the BDI (Belief-Desire-Intention) paradigm integrated into the GAMA modeling platform and its GAML

Top – Normalised cavity transmission at the wavelength of the measurement laser (1064 nm); Middle – Rela- tive gain of arm-length stabilisation (blue dashed) and measurement

Values of the parameters and input variables The data consist of hourly measurements of sap flow (bottom of the trunk), leaf water poten- tial at 2 levels and

Segment Choice Models : Feature-Rich Models for Global Distortion in Statistical Machine Translation *.. Kuhn, R., Yuen, D., Simard, M., Paul, P., Foster, G., Joanis, E.,

We attempted the use of Taguchi design of experiments to elucidate the influence of various synthesis factors of cement paste on the nanoscale properties of the C-S-H

The main mechanisms responsible for tem- porary or permanent trapping of particles are (1) inertial impaction [Palmer et al., 2004], which occurs when a parti- cle deviates from