Difference between revisions of "Journal:Autonomous experimental systems in materials science"

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==Present status of autonomous experiments==
==Present status of autonomous experiments==
===A brief description of our own autonomous experiments===
===A brief description of our own autonomous experiments===
In the closed-loop cycle shown in Figure 2, researchers only need to choose the material properties to optimize and provide the system with the necessary raw materials; the automatic system then takes control, repeatedly synthesizing and measuring the properties of new compounds until the best one is found. The ML algorithm uses previous knowledge to decide how the synthesis conditions should be changed to approach the desired outcome with each cycle.
Recently, we have developed an autonomous synthesis of inorganic thin films. [3] In this proof-of-concept study, we demonstrated the autonomous fabrication of TiO<sub>2</sub> thin films with low resistance and showed that this system accelerates experiments by tenfold.
To obtain these results, we have used robotic modules of a sputter deposition apparatus and a robotic device for measuring resistance. Other modules with robotic synthesis and measurement equipment can be connected to this system to adapt to the desired research. The robotic arm transfers the samples from module to module as needed, and the Bayesian optimization algorithm predicts the synthesis parameters for the next iteration.
===Autonomous experimental systems in the world===
Recent years have witnessed the rapid progress of autonomous experiments, including a) development of ML technology, b) improvement of robot technology and expansion of its range of applications, and c) realization of autonomous experiments using ML and robots. As discussed in the introduction, examples of autonomous materials syntheses can be found to demonstrate Stages 1 and 2. [5–17] In this section, we review the history and the latest advances demonstrating these two stages (Table 1). [18–30]
{|
| style="vertical-align:top;" |
{| class="wikitable" border="1" cellpadding="5" cellspacing="0" width="80%"
|-
  | colspan="4" style="background-color:white; padding-left:10px; padding-right:10px;" |'''Table 1.''' Examples of autonomous materials synthesis using robots.
|-
  ! style="background-color:#dddddd; padding-left:10px; padding-right:10px;" |Research group (year)
  ! style="background-color:#dddddd; padding-left:10px; padding-right:10px;" |Robot mechanism
  ! style="background-color:#dddddd; padding-left:10px; padding-right:10px;" |Optimization objective/Synthesized material
  ! style="background-color:#dddddd; padding-left:10px; padding-right:10px;" |Variables/Algorithm
|-
  | style="background-color:white; padding-left:10px; padding-right:10px;" |Matsuda ''et al.'' (1988) [18]
  | style="background-color:white; padding-left:10px; padding-right:10px;" |Robotic arm to manipulate the test tube
  | style="background-color:white; padding-left:10px; padding-right:10px;" |Maximizing color-developing reactions for analysis (Stage 1)
  | style="background-color:white; padding-left:10px; padding-right:10px;" |Optimizing the amount of reagent, reaction time, etc. using the simplex method
|-
  | style="background-color:white; padding-left:10px; padding-right:10px;" |Nikolaev ''et al.'' (2016) [19]
  | style="background-color:white; padding-left:10px; padding-right:10px;" |Laser to perform both heating and spectroscopy
  | style="background-color:white; padding-left:10px; padding-right:10px;" |Carbon nanotubes with maximized growth rate (Stage 1)
  | style="background-color:white; padding-left:10px; padding-right:10px;" |Optimizing temperature, pressure, and gas composition using a genetic algorithm
|-
  | style="background-color:white; padding-left:10px; padding-right:10px;" |Christensen ''et al.'' (2021) [20]
  | style="background-color:white; padding-left:10px; padding-right:10px;" |Liquid handling robot
  | style="background-color:white; padding-left:10px; padding-right:10px;" |Maximizing the yield of Suzuki-Miyaura coupling reaction (Stage 1)
  | style="background-color:white; padding-left:10px; padding-right:10px;" |Optimizing continuous variables (amount of ingredients, etc.) and categorical variables (catalyst type) using Bayesian optimization
|-
  | style="background-color:white; padding-left:10px; padding-right:10px;" |McMullen ''et al'' (2010) [21]
  | style="background-color:white; padding-left:10px; padding-right:10px;" |Flow reactor (synthesis in liquid phase)
  | style="background-color:white; padding-left:10px; padding-right:10px;" |Maximizing the yield of Heck reaction (Stage 1)
  | style="background-color:white; padding-left:10px; padding-right:10px;" |Optimizing temperature and raw materials ratio using simplex method
|-
  | style="background-color:white; padding-left:10px; padding-right:10px;" |Sans ''et al.'' (2015) [22]
  | style="background-color:white; padding-left:10px; padding-right:10px;" |Flow reactor
  | style="background-color:white; padding-left:10px; padding-right:10px;" |Maximizing the yield of imine synthesis (Stage 1)
  | style="background-color:white; padding-left:10px; padding-right:10px;" |Optimizing temperature and raw materials ratio using simplex method
|-
  | style="background-color:white; padding-left:10px; padding-right:10px;" |King ''et al.'' (2009) and King (2011) [23-24]
  | style="background-color:white; padding-left:10px; padding-right:10px;" |Liquid handling robot, a robotic arm, etc.
  | style="background-color:white; padding-left:10px; padding-right:10px;" |Discovering yeast genes (Stage 2)
  | style="background-color:white; padding-left:10px; padding-right:10px;" |Generating hypotheses and experimentally testing these hypotheses
|-
  | style="background-color:white; padding-left:10px; padding-right:10px;" |Burger ''et al.'' (2020) [25]
  | style="background-color:white; padding-left:10px; padding-right:10px;" |Free-roaming robot
  | style="background-color:white; padding-left:10px; padding-right:10px;" |Photocatalyst mixtures with maximized photocatalytic activity (Stage 2)
  | style="background-color:white; padding-left:10px; padding-right:10px;" |Optimizing the concentration of photocatalyst and additives using Bayesian optimization
|-
  | style="background-color:white; padding-left:10px; padding-right:10px;" |MacLeod ''et al.'' (2020) [26]
  | style="background-color:white; padding-left:10px; padding-right:10px;" |A gripper, a pipette mount, and a robotic arm
  | style="background-color:white; padding-left:10px; padding-right:10px;" |Organic hole transport materials with maximized hole mobility (Stage 2)
  | style="background-color:white; padding-left:10px; padding-right:10px;" |Optimizing annealing times and dopant concentrations using Bayesian optimization
|-
  | style="background-color:white; padding-left:10px; padding-right:10px;" |Krishnadasan ''et al.'' (2007) [27]
  | style="background-color:white; padding-left:10px; padding-right:10px;" |Flow reactor
  | style="background-color:white; padding-left:10px; padding-right:10px;" |CdSe nanoparticles with targeted spectroscopic characteristics (Stage 2)
  | style="background-color:white; padding-left:10px; padding-right:10px;" |Optimizing temperature and precursor concentrations using SNOBFIT method
|-
  | style="background-color:white; padding-left:10px; padding-right:10px;" |Tao ''et al.'' (2021) [28]
  | style="background-color:white; padding-left:10px; padding-right:10px;" |Flow reactor
  | style="background-color:white; padding-left:10px; padding-right:10px;" |Au nanoparticles with targeted spectroscopic characteristics (Stage 2)
  | style="background-color:white; padding-left:10px; padding-right:10px;" |Optimizing reaction time and precursor concentrations using Bayesian optimization
|-
  | style="background-color:white; padding-left:10px; padding-right:10px;" |Desai ''et al.'' (2013) [29]
  | style="background-color:white; padding-left:10px; padding-right:10px;" |Flow reactor
  | style="background-color:white; padding-left:10px; padding-right:10px;" |Abl kinase inhibitors with maximum activity (Stage 2)
  | style="background-color:white; padding-left:10px; padding-right:10px;" |Synthesizing from 27 × 10 row materials using random forest
|-
  | style="background-color:white; padding-left:10px; padding-right:10px;" |Dave ''et al.'' (2020) [30]
  | style="background-color:white; padding-left:10px; padding-right:10px;" |Flow reactor
  | style="background-color:white; padding-left:10px; padding-right:10px;" |Aqueous electrolytes with maximum electrochemical window (Stage 2)
  | style="background-color:white; padding-left:10px; padding-right:10px;" |Optimizing each precursor solution volume using Bayesian optimization
|-
  | style="background-color:white; padding-left:10px; padding-right:10px;" |Shimizu ''et al.'' (2020) [3]
  | style="background-color:white; padding-left:10px; padding-right:10px;" |A robot arm, a sputtering system, a resistance meter
  | style="background-color:white; padding-left:10px; padding-right:10px;" |Nb-doped TiO<sub>2</sub> thin film with minimized resistance (Stage 2)
  | style="background-color:white; padding-left:10px; padding-right:10px;" |Optimizing oxygen partial pressure using Bayesian optimization
|-
|}
|}
====Stage 1: Optimization of the yield of target substances or reaction conditions====





Revision as of 17:14, 1 September 2023

Full article title Autonomous experimental systems in materials science
Journal Science and Technology of Advanced Materials: Methods
Author(s) Ishizuki, Naoya; Shimizu, Ryota; Hitosugi, Taro
Author affiliation(s) Tokyo Institute of Technology, The University of Tokyo
Primary contact Email: hitosugi at g dot ecc dot u dash tokyo dot ac dot jp
Year published 2023
Volume and issue 3(1)
Article # 2197519
DOI 10.1080/27660400.2023.2197519
ISSN 2766-0400
Distribution license Creative Commons Attribution 4.0 International
Website https://www.tandfonline.com/doi/full/10.1080/27660400.2023.2197519
Download https://www.tandfonline.com/doi/pdf/10.1080/27660400.2023.2197519 (PDF)

Abstract

The emergence of autonomous experimental systems (AESs) integrating machine learning (ML) and robots is ushering in a paradigm shift in materials science. Using computer algorithms and robots to decide and perform all experimental steps, these systems require no human intervention. A current direction focuses on discovering unexpected materials and theories with unconventional research approaches. This article reviews the latest achievements and discusses the impact of AESs, which will fundamentally change the way we understand research. Moreover, as AESs continue to develop, the need to think about the role of human researchers becomes more pressing. While ML and robotics can free us from the repetitive aspects of research, we need to understand the strengths and limitations of ML and robots and focus on how humans can perform higher creativity. In addition, we also discuss inventorship and authorship in the era of autonomous systems.

Keywords: autonomous experimental system, closed-loop, machine learning, robots, materials science, inventorship, authorship, human researcher, human’s role

Graphic abstract: GA Ishizuki SciTechAdvMatMeth2023 3-1.jpg

Introduction

The total number of all possible small organic molecules is estimated to be at least 1060[1,2], and from that one can imagine a similarly large number of possible materials being derived using those molecules. This number helps illustrate the vastness of the materials search space, which must contain many materials that can help address current societal problems. In a way, the world of materials is a frontier for exploration, much like space or the deep sea.

How can we quickly and systematically find unexpected materials within this enormous search space? To this end, materials science needs a tool that can transcend the limits of human capabilities to serve as a materials explorer (Figure 1), akin to a spaceship or a deep-sea exploration vessel.


Fig1 Ishizuki SciTechAdvMatMeth2023 3-1.jpeg

Figure 1. The vision of the materials explorer. The exploration involves an autonomous experimental system, materials informatics, and human researchers. The heart of the materials explorer is an autonomous experimental system based on machine learning and robots (green, orange, and blue). This system is imbued with the skills of experts and generates large amounts of experimental data that could not have been generated by human researchers (data-production factory). The data generated by the autonomous experimental system is then processed by machine learning and simulations to predict new materials (materials informatics). In addition, the system organizes the data and generates "materials maps" and models, facilitating knowledge creation by providing researchers a sharable big-picture view of unexpected materials, thereby accelerating materials development.

The core of such a materials explorer is the autonomous experimental system (AES) based on machine learning (ML) and robots (green, orange, and purple in Figure 1). Here, the term "autonomous" means that a computer algorithm decides the next experimental steps while robots perform all experimental steps. This approach, which involves no human intervention, is called the closed-loop experiment (Figure 2).


Fig2 Ishizuki SciTechAdvMatMeth2023 3-1.jpeg

Figure 2. The concept of an autonomous experimental system (AES). The system autonomously synthesizes materials with optimal physical characteristics without human intervention. Autonomy leads to significant improvements: 1) fully digitalized experiments transforms all experimental parameters, including process conditions, into data; 2) removal of human error makes reproducibility reliable; and 3) implicit knowledge can be digitalized and embedded.

In general, new materials are sought in a multi-dimensional space by optimizing many relevant experimental parameters. Because of the vastness of the search space, the manual optimization of these parameters by individual researchers only produces incremental results that do not show the big picture. However, this problem is ideally suited for the AES to address. Figure 2 illustrates one such example. Here, based on the initial instructions, ML decides which compound to synthesize and feeds the corresponding directions to the robots; the robots synthesize, test, and report the results back to the algorithm, repeating the cycle until the desired result is obtained. This autonomous experimental approach drastically speeds up the materials exploration processes.

The concept of the materials explorer fundamentally changes the way we understand and conduct materials research, across three stages:

Stage 1: Optimization of the yield of target substances - Here, the target compound is known, but the optimum synthesis conditions are unknown. The target compound is decided by the human researchers before the experiment, and the AES quickly optimizes the synthesis conditions of the target compound within the search space specified by the human researchers. [3]

Stage 2: Finding new materials with desired properties - Here, the target physical properties are decided, but the compound possessing these properties is unknown. The AES quickly finds the best material within the search space specified by the human researchers. In contrast to Stage 1, it is the composition of the materials that is changed to find new compounds to meet the required physical properties. Materials with a variety of crystal structures and hierarchical structures are also explored.

Stage 3: Finding new materials or principles that no one has thought of before - Here, new materials, theories, and principles that are unexpected to researchers are discovered by combining the results from autonomous experiments, materials informatics, and human researchers (Figure 1). [4]

At present, the proofs of concepts of Stages 1 and 2 have been demonstrated in a variety of fields. [5–17] Expanding the application of AESs to a variety of experiments has become the next objective. Meanwhile, Stage 3 is rapidly advancing owing to the development of ML, robotics, and materials informatics. In this stage, it is critical to embed the researchers’ intuition and experience into the construction of theories. This inclusion of the human role is often referred to as having a "human-in-the-loop" or "researcher-in-the-loop."

An important point to note is that the transformation resulting from the three stages will change the way researchers think, giving completely new perspectives that researchers cannot obtain using conventional research methods. In addition, the transformation is not limited to a single laboratory; instead, it will change how we conduct research through a digital transformation of materials science. For example, experimentalists can remotely fabricate materials via the internet. In the same way, theorists can fabricate materials to test their predictions.

The data generated by such a system would fall into the domain of "big data." Researchers use this big data to extract human-readable information (i.e., via materials informatics). Because ML and robotics alone can neither find insights nor discover concepts in physics and chemistry, human researchers will always remain central to the research. The key point is that materials scientists must understand what ML and robotics can solve, and must set the right problem to be solved. The strength of human researchers lies in concept creation or problem identification in the larger context. Combining these strengths with ML and robotics is critical to accelerating research (i.e., the researcher-in-the-loop).

The process of autonomous materials exploration, however, raises one fundamental question: when experiments are performed autonomously and new materials are found without human intervention, who is the discoverer and inventor? This question not only relates to the authorship of papers and the inventorship of patents, but it also concerns researchers’ motivations. It is important to address this discussion as the autonomous experimental approach develops.

In this article, we review the trends and the prospects of AESs in materials science, specifically through the following aspects:

  • the overall status of autonomous experiments in materials science;
  • the history and the latest topics of autonomous materials synthesis;
  • the future of research using the AES;
  • some important take-home lessons we have learned when developing and using such a technology; and
  • the future of authorship and inventorship.

Throughout this review, we address what human researchers should focus on in the era of autonomous research. The year 2020 was momentous for this era; there were significant advancements in the field of autonomous research. This review aims to further contribute to the expansion of the era of autonomous materials research.

Present status of autonomous experiments

A brief description of our own autonomous experiments

In the closed-loop cycle shown in Figure 2, researchers only need to choose the material properties to optimize and provide the system with the necessary raw materials; the automatic system then takes control, repeatedly synthesizing and measuring the properties of new compounds until the best one is found. The ML algorithm uses previous knowledge to decide how the synthesis conditions should be changed to approach the desired outcome with each cycle.

Recently, we have developed an autonomous synthesis of inorganic thin films. [3] In this proof-of-concept study, we demonstrated the autonomous fabrication of TiO2 thin films with low resistance and showed that this system accelerates experiments by tenfold.

To obtain these results, we have used robotic modules of a sputter deposition apparatus and a robotic device for measuring resistance. Other modules with robotic synthesis and measurement equipment can be connected to this system to adapt to the desired research. The robotic arm transfers the samples from module to module as needed, and the Bayesian optimization algorithm predicts the synthesis parameters for the next iteration.

Autonomous experimental systems in the world

Recent years have witnessed the rapid progress of autonomous experiments, including a) development of ML technology, b) improvement of robot technology and expansion of its range of applications, and c) realization of autonomous experiments using ML and robots. As discussed in the introduction, examples of autonomous materials syntheses can be found to demonstrate Stages 1 and 2. [5–17] In this section, we review the history and the latest advances demonstrating these two stages (Table 1). [18–30]

Table 1. Examples of autonomous materials synthesis using robots.
Research group (year) Robot mechanism Optimization objective/Synthesized material Variables/Algorithm
Matsuda et al. (1988) [18] Robotic arm to manipulate the test tube Maximizing color-developing reactions for analysis (Stage 1) Optimizing the amount of reagent, reaction time, etc. using the simplex method
Nikolaev et al. (2016) [19] Laser to perform both heating and spectroscopy Carbon nanotubes with maximized growth rate (Stage 1) Optimizing temperature, pressure, and gas composition using a genetic algorithm
Christensen et al. (2021) [20] Liquid handling robot Maximizing the yield of Suzuki-Miyaura coupling reaction (Stage 1) Optimizing continuous variables (amount of ingredients, etc.) and categorical variables (catalyst type) using Bayesian optimization
McMullen et al (2010) [21] Flow reactor (synthesis in liquid phase) Maximizing the yield of Heck reaction (Stage 1) Optimizing temperature and raw materials ratio using simplex method
Sans et al. (2015) [22] Flow reactor Maximizing the yield of imine synthesis (Stage 1) Optimizing temperature and raw materials ratio using simplex method
King et al. (2009) and King (2011) [23-24] Liquid handling robot, a robotic arm, etc. Discovering yeast genes (Stage 2) Generating hypotheses and experimentally testing these hypotheses
Burger et al. (2020) [25] Free-roaming robot Photocatalyst mixtures with maximized photocatalytic activity (Stage 2) Optimizing the concentration of photocatalyst and additives using Bayesian optimization
MacLeod et al. (2020) [26] A gripper, a pipette mount, and a robotic arm Organic hole transport materials with maximized hole mobility (Stage 2) Optimizing annealing times and dopant concentrations using Bayesian optimization
Krishnadasan et al. (2007) [27] Flow reactor CdSe nanoparticles with targeted spectroscopic characteristics (Stage 2) Optimizing temperature and precursor concentrations using SNOBFIT method
Tao et al. (2021) [28] Flow reactor Au nanoparticles with targeted spectroscopic characteristics (Stage 2) Optimizing reaction time and precursor concentrations using Bayesian optimization
Desai et al. (2013) [29] Flow reactor Abl kinase inhibitors with maximum activity (Stage 2) Synthesizing from 27 × 10 row materials using random forest
Dave et al. (2020) [30] Flow reactor Aqueous electrolytes with maximum electrochemical window (Stage 2) Optimizing each precursor solution volume using Bayesian optimization
Shimizu et al. (2020) [3] A robot arm, a sputtering system, a resistance meter Nb-doped TiO2 thin film with minimized resistance (Stage 2) Optimizing oxygen partial pressure using Bayesian optimization

Stage 1: Optimization of the yield of target substances or reaction conditions

References

Notes

This presentation is faithful to the original, with only a few minor changes to presentation. In some cases important information was missing from the references, and that information was added.