Yayın: Predictive modeling of bacteria-based nanonetwork performance using simulation-driven machine learning and genetic algorithm optimization
Tarih
Kurum Yazarları
Işık, İbrahim
Yazarlar
Duman, Mustafa Ozan
Işık, İbrahim
Er, Mehmet Bilal
Tagluk, Mehmet Emin
Işık, Esme
Danışman
Dil
Türü
Yayıncı:
Wiley
Dergi Başlığı
Dergi ISSN
Cilt Başlığı
Özet
Bacteria-based nanonetwork (BN) offers a biologically inspired solution for enabling information exchange between nanomachines (NMs) in environments where traditional communication methods are ineffective. This study presents a 2D simulation model of a BN system that captures the chemotactic behavior of a single Escherichia coli (E. coli) bacterium navigating from a transmitter (TX) toward a receiver (RX) under varying environmental conditions. Key parameters, which are chemoattractant release rate (Q), TX-RX distance (d), and bacterial lifespan (), are systematically varied to evaluate their impact on communication performance, measured in terms of reach time and success rate. To enable accurate performance prediction without the need for computationally expensive repeated simulations, an analytical model is constructed using various machine learning (ML) techniques, including Linear Regression (LR), Random Forest (RF), and Multi-Layer Perceptron (MLP). Hyperparameters of MLP are optimized using a Genetic Algorithm (GA), significantly enhancing predictive accuracy and training stability. The results demonstrate the effectiveness of integrating dynamic simulation with data-driven modeling and hyperparameter optimization to represent complex system behavior. This framework offers valuable design insights for BN system development and supports the creation of efficient, scalable nanonetworks.
Açıklama
Kaynak:
Anahtar Kelimeler:
Konusu
Communication, Chemotaxis, Bacteria-based molecular communication, Escherichia coli, Genetic algorithm, Machine learning, Molecular communication, Nanonetworks, Nanotechnology, Science and technology, Multidisciplinary sciences, Science & technology - other topics
