Whether in theory or in practical application, nonlinear partial differential equations are used to describe problems in the fields of mechanics and control processes. The use of nonlinear partial differential equations to describe the above problems fully takes into account the influence of space, time, and time delay, so it can reflect the reality more accurately. This paper mainly studies the differential equation theory of nonlinear partial differential equations and its application in human-machine interface optimization [1, 2]. Human-machine interface mainly plays a key role in information transmission, information exchange, and communication between humans and machine. It is composed of words, symbols, images, and colors. Human-machine interface has become an important step in the process of human-machine system interaction for the system to exchange human-machine information, experience human-machine effect, and reduce the production cost of enterprises. It provides operators with the basis for judging direction and controlling operations. At present, human-machine interface has been widely used in aerospace industry, nuclear power monitoring industry, intelligent vehicle industry, special engineering vehicle driving control and other mechanical equipment fields. With network information technology and communication, although computer hardware technology is gradually becoming perfect, the human-machine interface design of information technology still is insufficient in many places, causing many problems in the process of human-machine interface using information technology. The effect due to the information transmission between the user and the system is caused by the user's cognitive impairment and easy-to-produce misunderstanding and error, thereby limiting the system performance [3]. Therefore, by building a safe and efficient system information environment, the human-machine interface can be implemented smoothly. However, due to the diversity of information in the system itself, users need cognitive attributes, such as intelligence and understanding in the process of activities, so as to comprehensively solve the human-machine interface design problems faced by the system. How to design and develop reasonably efficient systems and use digital interface to solve enterprise and design problems form the key to the cross research of human-machine interface design and engineering. Therefore, in order to allow users to integrate into the system environment more naturally, it is necessary to make handling equipment easier and put forward requirements for human-machine interface design. In this paper, a mechanical equipment, which is the research object, shows a substantial from the traditional bridge operation mode through the digital, soft operation to the remote digital interaction mode, so that the space occupied by mechanical equipment is reduced, as are the operation and information interaction processes [4].
Nonlinear partial differential equations, also known as nonlinear mathematical physics equations or nonlinear evolution equations, are used in this paper. It is a mathematical model describing the nonlinear phenomenon of mechanical equipment, which is represented as follows:
Optimization design evaluation model is based on interface color, achieved mainly through optimization of mechanical equipment at the visual interface. The human-machine interface has characteristics such as hue, lightness, purity, and tonal factors (such as optimization), such that the observer perceives differences in color vision. Different solutions with direct impacts on manufacturing of equipment will fit in the human-machine system environment, enabling harmony of the human-machine system and functional consistency of manufactured equipment. Therefore, designers need to analyze the visual perception effect while manufacturing equipment. According to Munsell's color theory, the unified softness of color is related to the lightness and area of visual elements and is related to the saturation of color [5]. Its correlation is as follows:
According to the nonlinear equation of each component of the manufactured equipment's contour boundary, the type of the manufacturing equipment contour boundary is determined, and then the human-machine optimization design evaluation model of the manufactured equipment is determined.
Scaling methods for judging matrix elements.
1 | Indicates that two factors are of equal importance compared to each other |
3 | One factor is slightly more important than the other factor, in a comparison of the two factors |
5 | It means that one factor is obviously more important than the other |
7 | One factor is more important than the other |
9 | One factor is more important than the other |
2, 4, 6, 8 | The median of the two adjacent judgments above |
Reciprocal | The judgment of the comparison between Factor |
Comparative analysis:
First, 80 samples of digital human-machine interface were collected as research objects, and similar or unsuitable samples were deleted through evaluation. Meanwhile, five designers with >5 years of design experience were invited to design, so as to determine the representative samples. A questionnaire was composed of samples, scoring items, and rating scales, and Statistical Package for the Social Sciences (SPSS) software was used to obtain the variance rate and line graph. Table 2 directly reflects the relationship between the characteristic values and the number of components. As can be seen from the line diagram, the extraction process of common factors is shown in Figure 2. Component 4 is a relatively obvious inflection point. The curve tends to be flat in the interval with a smaller eigenvalue, indicating that the first four factors have most of the information of the original data, and the four components are extracted as common factors. In this paper, the number of common factors was set as “4” in the SPSS software system, the evaluation score in the data information was analyzed by the factors, and the position of perceptual information vocabulary in the common factors was further determined. The square value of factor load in the matrix was polarized by orthogonal rotation with maximum variance. Finally, according to the rotated factor loading value, the perceptual information vocabulary of the above 29 pairs is summarized into four common factors, as shown in Table 3. Factor 1 expresses intuitive aesthetics and Factor 1 is named as “aesthetic factor”. Factor 2 includes functional use. Factor 2 is named as “functional factor”, Factor 3 is named as “experience factor” and Factor 4 as “emotional factor”. The above “aesthetic factors”, “functional factors”, “experience factors”, and “emotional factors” constitute the dimensional system of digital human-machine interface perception information. In order to further influence the relationship between information variables and evaluation factors, components are divided into two groups, and the specific distribution of the evaluation factors is analyzed and studied. From the data distribution in Figure 3, it can be seen that the variables affected by Components 1 and 4 are concentrated on the
Variance contribution rate.
1 | 13.069 | 45.065 | 45.065 | 13.069 | 45.065 | 45.065 |
2 | 7.461 | 25.727 | 70.792 | 7. 461 | 25.727 | 70.792 |
3 | 4.237 | 14.611 | 85.403 | 4.237 | 14.611 | 85.403 |
4 | 1.689 | 5.824 | 91.227 | 1.689 | 5.824 | 91.227 |
5 | 0.949 | 3.274 | 94.501 | |||
... | ... | ... | ... | |||
29 | −2.357E−1 | −8.129E | 100.00 |
Factor analysis.
A8 | 0.976 | 0.075 | −0.005 | −0.027 |
A9 | 0.976 | 0.075 | −0.005 | −0.027 |
A19 | 0.974 | 0.050 | −0.107 | 0.087 |
A13 | 0.974 | 0.050 | −0.107 | 0.087 |
A27 | 0.951 | −0.132 | 0.112 | 0.004 |
A15 | 0.951 | −0.132 | 0.112 | 0.004 |
A29 | 0.948 | 0.057 | −0.044 | 0.019 |
A11 | 0.940 | 0.087 | −0.137 | 0.069 |
A21 | 0.899 | −0.066 | −0.368 | −0.100 |
A6 | 0.859 | 0.162 | 0.372 | −0.131 |
A17 | 0.859 | 0.162 | 0.372 | −0.131 |
A25 | 780 | −0.882 | −0.331 | 0.142 |
A12 | 0.777 | 0.882 | −0.589 | 0.109 |
A16 | 0.777 | −0.844 | −0.589 | 0.109 |
A3 | 0.644 | −0.844 | 0.446 | −0.227 |
A14 | 0.644 | 0.837 | 0.446 | −0.227 |
A18 | 0.492 | 0.837 | 0.298 | 0.258 |
A23 | 0 088 | 0.685 | 0.291 | 0.131 |
A28 | 0.088 | 0.685 | 0.291 | 0.131 |
A22 | −0.051 | 0.141 | 0.670 | 0.179 |
A10 | −0.051 | 0.060 | 0.670 | 0.179 |
A24 | 0.007 | 0.060 | 0.536 | 0.293 |
A20 | 0.007 | −0.426 | 0.487 | 0.293 |
Al | −0.166 | −0.426 | 0.487 | 0.142 |
A7 | −0.166 | −0.240 | 0.410 | 0.640 |
A5 | 0.148 | −0.067 | 0.410 | 0.447 |
A4 | 0.312 | 0.312 | 0.373 | 0.434 |
A26 | 0.108 | 0.312 | 0.373 | 0.418 |
A2 | −0.085 | 0.061 | −0.158 | −0.328 |
The main design of the digital human-machine interface of mechanical equipment is analyzed and the perceptual information is studied. The main machinery's digital human-machine interface development process is divided into three parts: areas of users, designers, and experts. According to the nonlinear partial differential equations, the main body of the perceptual information transmission model is established. Through the cognitive experiment of each design subject, cognitive differences were studied, using factor analysis to build the “aesthetic factors”, “functional factors”, “experience factor”, and “emotion factor” through digital human-machine interface system. The fusion of perceptual information space distribution provides the possibility for the evaluation of digital human-machine interface design of mechanical equipment and lays a foundation for the visual optimization design of human-machine interface of mechanical industry equipment.
In this paper, the perceptual information in the visual optimization design is used to solve the difficulties in the design of the digital human-machine interface of mechanical equipment. Through complex digital design field, it can be found that the prevalence of cognitive load, such as cognitive mismatch problem, is too large. Through usability testing analysis and research of the human-machine interface design and its evaluation, this article mainly discusses the user interface. On the basis of cognitive information processing to meet the user's cognitive needs and develop mechanical equipment's digital human-machine interface design strategy, the nonlinear partial differential equations with human-machine interface cognitive model is applied to make human-machine interface more humane; the human-machine interface is made more explicit and concrete, perceptual and rational. This lets mechanical equipment be more beautiful and practical.