System-Materials Nanoarchitectonics /

This book is the first publication to widely introduce the contributions of nanoarchitectonics to the development of functional materials and systems. The book opens up pathways to novel nanotechnology based on bottom-up techniques. In fields of nanotechnology, theoretical and practical limitations...

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Bibliographic Details
Corporate Author: SpringerLink (Online service)
Other Authors: Wakayama, Yutaka (Editor), Ariga, Katsuhiko (Editor)
Format: eBook
Language:English
Published: Tokyo : Springer Japan : Imprint: Springer, 2022.
Edition:1st ed. 2022.
Series:NIMS Monographs,
Subjects:
Online Access:Connect to the full text of this electronic book
Table of Contents:
  • What is Nanoarchitectonics?
  • Synthesis of Semiconductor Nanowires
  • Nanoparticle Biomarkers Adapted for Near-Infrared Fluorescence Imaging
  • Frontiers in Mesoscale Materials Design
  • Wavelengh-selective Photothermal Infrared Sensors
  • Functional Molecular Liquids
  • Ionic nanoarchitectonics: Creation of polymer-based atomic switch and decision-making device
  • Oxoporphyrinogens: Novel Dyes based on the Fusion of Calix[4]pyrrole, Quinonoids and Porphyrins
  • Growth and electronic and optoelectronic applications of surface oxides on atomically thin WSe2
  • Portable toxic gas sensors based on functionalized carbon nanotubes
  • Advanced Nanomechanical Sensor for Artificial Olfactory System: Membrane-type Surface Stress Sensor (MSS)
  • Quantum Molecular Devices toward Large-Scale Integration
  • Nanostructured bulk thermoelectric materials for energy harvesting
  • Artificial Photosynthesis: Fundamentals, Challenges, and Strategies
  • Smart Polymers for Biomedical Applications
  • Geometrical and mechanical nanoarchitectonics at interfaces bridging molecules with cell phenotypes
  • Electrical measurement by Multiple-Probe Scanning Probe Microscope
  • Large-Scale First-principles Calculation Technique for Nanoarchitectonics: Local orbital and Linear-scaling DFT methods with the CONQUEST code
  • Machine Learning Approaches in Nanoarchitectonics.