1. Introduction
Surface topography is a fingerprint of the workpiece manufacturing process, which has an important impact on the service life and service performance of the workpiece, and it is an important factor in evaluating the functional properties of the surface and revealing friction and wear mechanisms [
1,
2,
3,
4]. The surface texture parameter is the most common and important digital characterization of surface topography, which is important for assessing and controlling the functional properties of surfaces [
5].
Along with the development of surface characterisation techniques, scholars have carried out a series of studies on the correlation between 3D surface texture parameters and tribological properties. Dzierwa combined ball-on-disc wear experiments and found that surface topography has a significant effect on tribological properties [
6]. Pawlus investigated the characterisation analysis of surface topography and concluded that
Sp/
Sz and
Sq/
Sa are better than
Ssk and
Sku in characterising the vertical coordinate distribution of surface textures [
7]. Venkata analysed the effect of three-dimensional surface texture parameters on the friction coefficient and wear depth with pin disk wear tests at different weights and sliding speeds [
8]. Yang et al. combined finite element analysis with experimental studies to investigate the correlation between surface roughness parameters and wear properties and proposed a wear performance determination method [
9]. In recent years, scholars based their studies on the ISO25178-2 standard [
10], in the surface topography characterisation analysis [
11], functional evaluation [
12] and other aspects of research. Although scholars have investigated related issues, the influence mechanism of surface topography on tribological properties is still unclear.
Surface topography is an important influence on tribological properties, but there is a wide variety of surface topography characterisation parameters, so it is particularly important to select the appropriate parameter variables. The correlation analysis between parameters is the basis of parameter selection; therefore, some scholars have studied the correlation between parameters.
Mieczyslaw discusses the correlation between surface roughness parameters using linear correlation analysis [
13]. Pawlus has established a parameter set for surface topography based on the screening of surface texture parameters [
5]. Basil found a significant negative correlation between
Smrl and contact angle in his study on the effect of surface texture parameters on contact angle [
14]. Yang has researched the correlation of surface texture parameters in grinding and established a parameter set for surface characterisation in grinding [
15]. The current study widely used Pearson’s linear correlation coefficient to complete the correlation analysis, but it was found in the study that the parameters were not all linearly correlated with each other, and therefore the selection of parameters based on the correlation analysis was often inaccurate.
Ball-end milling is an important method in machining and is widely used in aerospace manufacturing, mould machining, automotive manufacturing and many other fields [
16]. In ball-end milling, the machined surface exhibits pit-like topographical features under the influence of machining parameters such as cutting width (
ae), tool cut-in angle and feed per tooth (
fz) [
17]. In this paper, taking the ball-end milling machined surface as the research object, the correlation between 3D surface texture parameters and the friction coefficient is studied based on the established new correlation analysis model, and the prediction model of the friction coefficient based on surface texture parameters is established on this basis. The research in this paper provides new ideas for further revealing the correlation between surface topographic features and tribological performance.
3. Correlation Analysis and Prediction
Grey correlation analysis is an essential branch of grey system theory, which can effectively determine the degree of correlation between small samples of data series [
18,
19]. Grey correlation analysis is a method of achieving correlation evaluation based on the degree of similarity between data series, but it tends to ignore the effect of data magnitude. In this study, it was found that the changing characteristics of the data were important for the analysis of the data, which was not adequately taken into account by the grey correlation analysis method. For this reason, this paper establishes an improved grey correlation analysis model, which is based firstly on the idea that the data series are non-dimension and all of them are placed in the same [0, 1] interval, and then based on the analysis of the characteristics of the data changes in the correlation.
3.1. Non-Dimension Processing
Different data series tend to have different dimensions, and their value ranges are bound to be different, so direct correlation analysis of data series with different dimensions is not accurate. Therefore, the data series need to calculated non-dimensionally before correlation analysis can be carried out. Let
Xi = (
xi(1),
xi(2), …,
xi(
n)) be the behavioural sequence of factor
Xi. The non-dimensional calculation is shown in the following equation:
After non-dimensional processing of the data sequence, it becomes . The non-dimensional calculation allows the data series to all have the same dimensions and the data to all be placed in the same [0, 1] interval, laying the foundation for subsequent correlation analysis.
3.2. The Rate of Change of Data
When studying the problem of correlation analysis of data series, we tend to focus more on the changing characteristics of the data series. Therefore, on the basis of placing all of the data series in the same interval, calculating the rate of change of the data series can better analyse the change characteristics of the data series and more accurately calculate the degree of correlation between different data series. The rate of change of data is calculated as shown in Equation (2).
The computed data sequence is .
3.3. Grey Relational Grade
Grey correlation analysis is an important branch of grey system theory; along with the development of grey system theory, numerous grey correlation analysis models have appeared, such as absolute relational grade, relative relational grade, synthetic relational grade and so forth [
20]. Based on the basic idea of absolute relational grade, this paper analyses the correlation characteristics of different data series by using the sequence of data change rates. Taking the correlation calculation of two data series as an example, the calculation steps are as follows:
3.3.1. Zeroing of the Starting Point
Different data series
often have different starting points, and in order to calculate their degree of correlation more accurately, the data series should all have the same starting point. After zeroing the starting point, the starting data sequence can be expressed as
and
.
3.3.2. Calculation of Characteristic Parameters
Based on the basic idea of grey correlation analysis, the characteristic parameters of the correlation are defined as
3.3.3. Calculating the Degree of Correlation for Improved Correlation Analysis Models
The correlation calculation method is based on the idea of grey absolute relational grade; paying more attention to the characteristics of the change between the data, the calculated grey relational grade can better accurately the change law between the data series, and more accurately analyse the degree of correlation between the data series. The grey relational grades all lie between (0, 1], and the closer the value of grey relational grade is to 1, the stronger the correlation.
3.4. Multi-Parameter Prediction Model
Grey systems theory enables accurate prediction of future changes in information systems by mining information. For the change characteristics of the system under the influence of multi-parameters, the zeroth order multi-parameter GM(0,N) is usually used for prediction analysis. The GM(0,N) models tend to focus on the data themselves, ignoring the effect of dimension and range of values on the data. For this reason, this paper improves GM(0,N) based on the basic theory of grey system theory.
Let the system data sequence be ; the relevant factors of the data sequence are .
3.4.1. Dimensionless Processing of the Data
Since the data series often have different dimensions from each other, all of the data are firstly non-dimensional and computed using initialling operator, i.e.,
3.4.2. Generate the Data Sequence into an Accumulation Data Sequence
Then, the data sequence is transformed into
3.4.3. Calculate the Cumulative Data Sequence Matrix
Establishing a matrix of correlating factors
The data matrix of the system is .
3.4.4. Calculation of Model Coefficients
3.4.5. Building the GM(0,N) Prediction Model
Thus, the GM(0,N) prediction model can be obtained in relation to the accumulated system data, and then the model data can be restored and finally multiplied with the initial value to obtain the predicted value of the system information data sequence.
The GM(0,N) model in grey system theory can complete the prediction of system characteristics under multiple influencing factors, but it does not take into account the effects of different meanings and different dimension between parameters on the prediction model. The improved GM(0,N) model fully takes into account the effect of dimension, which makes its physical meaning clearer and the prediction results more accurate.