Abstract

The withdrawal of effective but toxic corrosion inhibitors has provided an impetus for the discovery of new, benign organic compounds to fill that role. Concurrently, developments in the high-throughput synthesis of organic compounds, the establishment of large libraries of available chemicals, accelerated corrosion inhibition testing technologies, and the increased capability of machine learning methods have made discovery of new corrosion inhibitors much faster and cheaper than it used to be. We summarize these technical developments in the corrosion inhibition field and describe how data-driven machine learning methods can generate models linking molecular properties to corrosion inhibition that can be used to predict the performance of materials not yet synthesized or tested. We briefly summarize the literature on quantitative structure–property relationships models of small organic molecule corrosion inhibitors. The success of these models provides a paradigm for rapid discovery of novel, effective corrosion inhibitors for a range of metals and alloys in diverse environments.

Highlights

  • Corrosion is responsible for an excessive amount of catastrophic failure in many different industries, causing death, injury, and capital loss

  • The main focus of the review is the use of the quantitative structure–property relationship (QSPR) method to predict the corrosion inhibitory properties of organic compounds [8,9,10]

  • High-throughput and combinatorial synthesis of small organic compounds is well established in the pharmaceutical industry, it is rarely used in corrosion inhibition research

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Summary

Introduction

Corrosion is responsible for an excessive amount of catastrophic failure in many different industries, causing death, injury, and capital loss. The main focus of the review is the use of the quantitative structure–property relationship (QSPR) method to predict the corrosion inhibitory properties of organic compounds [8,9,10]. Such models can be used to understand the relationships between the chemical structure of inhibitors and their efficacy and to allow the inhibition of compounds not yet synthesized or tested to be predicted. They can be used as surrogate fitness functions for the evolutionary design of new corrosion inhibitors with multiple desirable properties [11,12,13]

High-Throughput Synthesis and Testing of Organic Corrosion Inhibitors
Machine Learning Modelling Methods
Computational Models of Corrosion Inhibitory Properties of Organic Compounds
Conclusions and Perspective
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