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Network Properties and Measures

Network science has emerged as a powerful interdisciplinary field that provides tools to analyze complex systems represented as networks. A network consists of nodes (or vertices) and edges (or links) that connect them, capturing relationships in systems ranging from social interactions and biological systems to transportation and communication infrastructures. Understanding the structural and functional characteristics of these networks requires the study of network properties and measures, which quantify patterns, behaviors, and dynamics within interconnected systems. One of the most fundamental properties of a network is its degree distribution , which describes how connections are distributed among nodes. The degree of a node refers to the number of edges connected to it. In many real-world networks, such as social or internet networks, degree distribution follows a power-law pattern, indicating the presence of a few highly connected nodes (hubs) and many nodes with fewer connecti...
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Centrality Measures and Network Flow Analysis: Foundations of Network Science

  Introduction In the era of interconnected systems, understanding how networks function has become essential across disciplines such as computer science, sociology, biology, and engineering. Two fundamental concepts in network science—centrality measures and network flow analysis—play a critical role in analyzing the structure and dynamics of networks. Centrality measures help identify the most important or influential nodes within a network, while network flow analysis examines how resources, information, or materials move through the network. Together, these concepts provide powerful tools for optimizing performance, enhancing resilience, and uncovering hidden patterns in complex systems. Understanding Centrality Measures Centrality measures are quantitative metrics used to determine the importance of nodes in a network. Different centrality measures capture different aspects of importance, depending on the structure and purpose of the network. Degree centrality, one of the s...

Biological Networks: Understanding the Complexity of Living Systems

  Introduction Biological systems are inherently complex, consisting of numerous interacting components that work together to sustain life. To understand this complexity, scientists increasingly rely on the concept of biological networks. These networks provide a structured framework for analyzing relationships among biological entities such as genes, proteins, metabolites, and cells. By representing these interactions as nodes and edges, researchers can uncover patterns, predict behaviors, and gain deeper insights into the functioning of living organisms. Biological networks have become a cornerstone of modern systems biology, enabling a shift from reductionist approaches to holistic, system-level understanding. Types of Biological Networks Biological networks can be broadly categorized into several types based on the nature of interactions they represent. Gene regulatory networks describe how genes control each other’s expression through transcription factors and regulatory el...

Future Technologies in Network Security

Introduction As digital transformation accelerates across industries, network security has become a critical pillar for safeguarding information systems, communication infrastructures, and sensitive data. The proliferation of cloud computing, Internet of Things (IoT), 5G networks, and artificial intelligence (AI) has significantly expanded the attack surface, making traditional security approaches insufficient. In response, a new generation of advanced technologies is emerging to address evolving cyber threats. These future technologies aim to enhance detection, prevention, and response capabilities, ensuring robust and resilient network security frameworks. Artificial Intelligence and Machine Learning in Security Artificial Intelligence (AI) and Machine Learning (ML) are at the forefront of next-generation network security solutions. These technologies enable systems to learn from vast amounts of data, identify patterns, and detect anomalies in real time. Unlike traditional rule-ba...

Satellite Network

A satellite network is a sophisticated communication and surveillance system that uses artificial satellites orbiting the Earth to transmit data, signals, and information across vast distances. These networks play a critical role in modern society, supporting applications ranging from telecommunications and navigation to weather forecasting, scientific research, and national security. With the rapid advancement of space technology, satellite networks have become an indispensable component of global infrastructure. At its core, a satellite network consists of three main segments: the space segment, the ground segment, and the user segment. The space segment includes satellites placed in different types of orbits such as Low Earth Orbit (LEO), Medium Earth Orbit (MEO), and Geostationary Orbit (GEO). Each orbit serves specific purposes. LEO satellites are closer to Earth and provide low-latency communication, making them ideal for real-time applications. GEO satellites, positioned at a f...

Air Defence Network

An air defence network is a highly coordinated system designed to detect, track, intercept, and neutralize airborne threats such as enemy aircraft, unmanned aerial vehicles (UAVs), cruise missiles, and ballistic missiles. In modern warfare, where aerial threats evolve rapidly in speed, stealth, and precision, an integrated air defence network (IADN) plays a crucial role in safeguarding a nation’s sovereignty, critical infrastructure, and civilian population. It combines advanced radar systems, communication technologies, command and control centers, and weapon platforms into a unified, responsive framework. At the core of any air defence network lies its surveillance and detection capability. This is primarily achieved through a range of radar systems, including early warning radars, tracking radars, and fire-control radars. Early warning radars operate over long distances and are capable of identifying incoming threats at high altitudes and speeds. These systems provide valuable time...

Real-Time Detection

Real-Time Detection and Segmentation of Oceanic Whitecaps via EMA-SE-ResUNet Oceanic whitecaps are caused by wave breaking and are very important in air–sea interactions. Usually, whitecap coverage is considered a key factor in representing the role of whitecaps. However, the accurate identification of whitecap coverage in videos under dynamic marine conditions is a tough task. An EMA-SE-ResUNet deep learning model was proposed in this study to address this challenge. Based on a foundation of residual network (ResNet)-50 as the encoder and U-Net as the decoder, the model incorporated efficient multi-scale attention (EMA) module and squeeze-and-excitation network (SENet) module to improve its performance. By employing a dynamic weight allocation strategy and a channel attention mechanism, the model effectively strengthens the feature representation capability for whitecap edges while suppressing interference from wave textures and illumination noise. The model’s adaptability to complex...