SYSYSOC-PHJul 31, 2023

What is System Dynamics Modeling? Defining Characteristics and the Opportunities they Create

arXiv:2307.1180138 citations
Originality Synthesis-oriented
AI Analysis

For researchers and practitioners in system dynamics, this provides a clear definition to unify the field and guide future work.

This paper defines quantitative system dynamics through five key characteristics (causal feedback structure, accumulations/delays, equation-based, continuous time, feedback dynamics analysis) and identifies research opportunities in causality, disaggregation, data science/AI, and scientific advancement.

A clear definition of system dynamics modeling can provide shared understanding and clarify the impact of the field. We introduce a set of characteristics that define quantitative system dynamics, selected to capture core philosophy, describe theoretical and practical principles, and apply to historical work but be flexible enough to remain relevant as the field progresses. The defining characteristics are: (1) models are based on causal feedback structure, (2) accumulations and delays are foundational, (3) models are equation-based, (4) concept of time is continuous, and (5) analysis focuses on feedback dynamics. We discuss the implications of these principles and use them to identify research opportunities in which the system dynamics field can advance. These research opportunities include causality, disaggregation, data science and artificial intelligence, and contributing to scientific advancement. Progress in these areas has the potential to improve both the science and practice of system dynamics.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes