Author: cxdig

Post-pandemic mobility patterns in London

Roberto Murcio, Nilufer Sari Aslam, Joana Barros

Understanding human mobility is crucial for urban and transport studies in cities. People’s daily activities provide valuable insight, such as where people live, work, shop, leisure or eat during midday or after-work hours. However, such activities are changed due to travel behaviours after COVID-19 in cities. This study examines the mobility patterns captured from mobile phone apps to explore the behavioural patterns established since the COVID-19 lockdowns triggered a series of changes in urban environments.

Read the full article at: arxiv.org

Winter Workshop on Complex Systems 2024

The Winter Workshop on Complex Systems is a one-week workshop where young researchers worldwide come together to work on interdisciplinary projects around complex systems.

The primary focus of the workshop is for participants to engage into novel research projects.

This is the 9th edition of the WWCS and it will be held in the Catalan Pyrenees from January 21st to Jan 26th 2024.

More at: wwcs2024.github.io

Catch-22s of reservoir computing

Yuanzhao Zhang and Sean P. Cornelius

Phys. Rev. Research 5, 033213

Reservoir computing (RC) is a simple and efficient model-free framework for forecasting the behavior of nonlinear dynamical systems from data. Here, we show that there exist commonly-studied systems for which leading RC frameworks struggle to learn the dynamics unless key information about the underlying system is already known. We focus on the important problem of basin prediction—determining which attractor a system will converge to from its initial conditions. First, we show that the predictions of standard RC models (echo state networks) depend critically on warm-up time, requiring a warm-up trajectory containing almost the entire transient in order to identify the correct attractor. Accordingly, we turn to next-generation reservoir computing (NGRC), an attractive variant of RC that requires negligible warm-up time. By incorporating the exact nonlinearities in the original equations, we show that NGRC can accurately reconstruct intricate and high-dimensional basins of attraction, even with sparse training data (e.g., a single transient trajectory). Yet, a tiny uncertainty in the exact nonlinearity can render prediction accuracy no better than chance. Our results highlight the challenges faced by data-driven methods in learning the dynamics of multistable systems and suggest potential avenues to make these approaches more robust.

Read the full article at: link.aps.org

Intensive Complexity Course @NECSI : Winter 2024

This January, discover the science that teaches us about collected patterns of behavior, helps us understand the fluctuations of global finance, and can help us meet societal, organization and global challenges.

This course provides an introduction to essential concepts of complex systems and related mathematical methods and simulation strategies with application to physical, biological and social systems.

More at: necsi.edu

The Nobel Prize in Chemistry 2023

Moungi G. Bawendi, Louis E. Brus and Alexei I. Ekimov are awarded the Nobel Prize in Chemistry 2023 for the discovery and development of quantum dots. These tiny particles have unique properties and now spread their light from television screens and LED lamps. They catalyse chemical reactions and their clear light can illuminate tumour tissue for a surgeon.

Read the full article at: www.nobelprize.org