A New Approach for Predicting the Rheological Properties of Oil-Based Drilling Fluids under High Temperature and High Pressure Based on a Parameter-Free Method

: Under different temperatures and pressures, the physical parameters of drilling ﬂuid will change, resulting in inaccurate drilling hydraulic calculations. Aiming to address the problem of the traditional rheological prediction method needing to ﬁrst determine the rheological model, this paper proposed a method for ﬁrst predicting the readings of the rheometer and then determining the rheological model. The model established in this paper adopted a parameter-free method, which expands the application range of the model. Rheology experiments were carried out on the three types of oil-based drilling ﬂuids collected at the well site. The model in this paper was veriﬁed based on the experimental data. The results showed that, compared with the traditional drilling ﬂuid rheological prediction method, the model established in this paper had a better prediction effect, with an average error of 4.85%, and the average error reduction ranges from 3.8% to 8.3%. The model established in this paper is able to provide theoretical support for accurate hydraulic calculation.


Introduction
With the development of technology, deep and ultra-deep layers have gradually become one of the important directions of current exploration and development.With developments in drilling, the temperature and pressure in the formation are becoming higher and higher, and the rheology of the drilling fluid changes with the temperature and pressure.The rheology of the drilling fluid measured only by the surface conditions cannot accurately represent the true situation of the drilling fluid rheology in the wellbore, which seriously affects the calculation accuracy of drilling hydraulics.Therefore, it is necessary to study the rheological changes in the drilling fluid under high-temperature and high-pressure conditions [1,2].
The study of the rheological properties of drilling fluids at high temperature and high pressure in order to accurately calculate the hydraulic parameters of drilling fluid began in the 1950s, but it was mainly concentrated on the Bingham model and the power law model, and there was no systematic calculation method of rheological parameters at high temperature and high pressure.In 1958, Srini Vasan and Gatlin used a Fann V-G viscometer to analyze the rheology of clay-based drilling fluids at different temperatures and constructed a simple prediction model of the plastic viscosity of drilling fluid [3].In 1967, Annis conducted an experimental study on the rheology of water-based drilling fluids at high temperature and high pressure using Fann's high-temperature and highpressure viscometer and presented a qualitative analysis of the yield value and viscosity change in drilling fluid at high temperature and high pressure [4].In 1975, McMordie et al. conducted relevant research on the rheology of oil-based drilling fluids at high temperature and high pressure based on the power law model.In the analysis process, the logarithm of both sides of the power law model was converted into a linear model.At the same time, it was assumed that the temperature and pressure only affected the consistency coefficient of the drilling fluids and the liquidity index had no effect.From this, a simple prediction model of the consistency coefficient was obtained [5].In 1985, Polite used the Bingham model to carry out an experimental analysis of the rheological properties of reverse-emulsified oil-based drilling fluids under high temperature and pressure and presented a prediction model of the Bingham yield value and plastic viscosity [6].Since then, many researchers have carried out corresponding research and analysis on the hightemperature and high-pressure rheology of drilling fluid, but most of these studies are based on the Bingham and power-law rheological models recommended by the American Petroleum Institute (API), and the corresponding rheological parameter regression models are obtained through rheological experiment regression.In 1989, Yan Jienian carried out an experimental analysis on the high-temperature and high-pressure rheology of mineraloil-based drilling fluids with different densities and conventional water-in-oil emulsion drilling fluids, mainly analyzing the changes in the plastic viscosity, apparent viscosity, and yield value of drilling fluids with under different temperatures and pressures [7].In 1990, Yan Jienian presented a prediction model for the apparent viscosity of water-in-oil emulsion drilling fluids [8].In 2009, Zhao Shengying and others improved the model and further proposed a comprehensive mathematical model for predicting plastic viscosity, yield value, and apparent viscosity [9].In the same year, Zhao Huaizhen and others carried out an experimental study on the ultra-high-temperature and high-pressure rheology of high-temperature water-based drilling fluids and presented a mathematical model for predicting the apparent viscosity of the drilling fluids [10].In 2010, Wang Fuhua studied the apparent viscosity and plastic viscosity of water-based drilling fluids and established a model for the variation of apparent viscosity with temperature and pressure [11].In 2017, Gokdemir conducted research on water-based drilling fluids using a high-pressure, high-temperature (HPHT) Anton Paar MCR-302 compact rheometer, analyzing the effects of pressure on yield stress, apparent viscosity, and the flow behavior index [12].In 2018, FAKOYA established a model for the apparent viscosity change of oil-based mud based on its characteristics [13].In 2018, Anawa compared the error of different drilling fluid rheological models in predicting the rheological properties of bentonite drilling fluid [14].In 2021, Cesar Vivas conducted a study on the thermal stability of drilling fluids under high temperature and pressure [15].In 2021, Agwu systematically reviewed recent research on the prediction of the high-temperature and high-pressure rheological properties of drilling fluids [16].In 2021, Okorie conducted research on the rheological properties of high-temperature and high-pressure drilling fluids, summarizing the laboratory, field, and model studies used in the research process [17].In 2023, Alade studied the effect of high temperature and pressure on the rheological properties of drilling fluids using CFD methods [18].
To sum up, the rheological analysis of drilling fluid at high temperature and high pressure is mostly based on Bingham and power law models, and the rheological parameter prediction models given by experiments are mostly empirical formulas.The method first assumes the rheological model and then introduces the variable temperature T and pressure P to modify and calculate the rheological parameters at high temperature and high pressure.These models are based on the empirical formula of high-temperature and high-pressure rheological parameters and temperature and pressure (or temperature and pressure changes); that is, the empirical formula is fitted with experimental data to predict the specific rheological parameters (such as plastic viscosity, apparent viscosity, etc.) of drilling fluid at different temperatures and pressures.
This method has the following shortcomings: due to the possibility of changes in the most suitable rheological model of drilling fluid at different temperatures and pressures, determining the rheological model before prediction may cause significant errors.
In view of this problem, this paper predicts the readings of the six-speed viscometer of the high-temperature and high-pressure oil-based drilling fluid and then determines the rheological model and parameters of the temperature based on the predicted readings of the viscometer, which improves the prediction accuracy of the rheology of the hightemperature and high-pressure oil-based drilling fluid and provides the basis and help for the subsequent hydraulic calculation.

Experimental Equipment
Due to the different formulations of different drilling fluids, the rheological changes in drilling fluids under high temperature and high pressure are also different.Therefore, it is difficult to predict the rheological properties of drilling fluids under high temperature and high pressure for all drilling fluids.It is necessary to carry out indoor experiments for different drilling fluids and then select an appropriate method for rheological prediction.
In the laboratory test, the readings of the six-speed viscometer of the drilling fluid were measured, and the corresponding rheological parameters were regressed according to the corresponding rheological model.
The Grace M8500 high-temperature and high-pressure rheometer was used in this experiment, and the basic parameters of the equipment are shown in Table 1.

Experimental Design
In this paper, the oil-based mud used in the actual drilling of three wells was collected at the well site.The three types of oil-based mud experimental test samples are shown in Table 2.We measure the data of the viscometer at 3, 6, 100, 200, 300, and 600 speeds in the range of 60 • C to 160 • C and 0.1 MPa to 150 MPa.

Experimental Result
Experiments were carried out on the three samples.Based on the experimental plan, the results from the Tianan 1 well are shown in Figure 1.
Based on the experimental plan, the results from the Tianwan 1 well are shown in Figure 2.
The results from the Hu 6 well are shown in Figure 3.
It can be seen from the figure that as the temperature increases, the shear stress shows a downward trend.When the temperature is increased from 60 • C to 100 • C, the shear stress value decreases by 40-52% at a shear rate of 1021.92 s −1 .The higher the pressure, the greater the shear stress reduction.As the pressure increases, the shear stress gradually increases.When the pressure is low, the increase in shear stress is small.Based on the experimental plan, the results from the Tianwan 1 well are shown in Figure 2.   The results from the Hu 6 well are shown in Figure 3.The results from the Hu 6 well are shown in Figure 3.It can be seen from the figure that as the temperature increases, the shear stress shows a downward trend.When the temperature is increased from 60 °C to 100 °C, the shear stress value decreases by 40-52% at a shear rate of 1021.92 s −1 .The higher the pressure, the greater the shear stress reduction.As the pressure increases, the shear stress gradually increases.When the pressure is low, the increase in shear stress is small.

Model Establishment
At present, the traditional method for predicting the rheological properties of drilling fluids under high temperature and high pressure first needs to determine the rheological model and then calculate the rheological parameters under the experimental conditions, and finally perform regression analysis on the rheological parameters to obtain the prediction of the rheological properties of drilling fluids under high temperature and high pressure.However, under different temperature and pressure conditions, the drilling fluid may conform to different rheological models, and inappropriate rheological models will increase the error of hydraulic calculation.Aiming to address this problem, this paper proposed a method to directly predict the results of rheological experiments.

Model Building
The rheological model is an important method for describing the rheology of drilling fluid.Rheological parameters in rheological model can be calculated based on readings from a six-speed rotational viscometer.Therefore, if the readings of the six-speed rotational viscometer of the drilling fluid under different temperature and pressure conditions

Model Establishment
At present, the traditional method for predicting the rheological properties of drilling fluids under high temperature and high pressure first needs to determine the rheological model and then calculate the rheological parameters under the experimental conditions, and finally perform regression analysis on the rheological parameters to obtain the prediction of the rheological properties of drilling fluids under high temperature and high pressure.However, under different temperature and pressure conditions, the drilling fluid may conform to different rheological models, and inappropriate rheological models will increase the error of hydraulic calculation.Aiming to address this problem, this paper proposed a method to directly predict the results of rheological experiments.

Model Building
The rheological model is an important method for describing the rheology of drilling fluid.Rheological parameters in rheological model can be calculated based on readings from a six-speed rotational viscometer.Therefore, if the readings of the six-speed rotational viscometer of the drilling fluid under different temperature and pressure conditions can be obtained, then the rheological parameters under the corresponding conditions can be calculated to determine the rheological properties of the drilling fluid under different temperatures and pressures.It is impractical to experimentally obtain rheometer readings at all temperatures and pressures.Therefore, this paper establishes a predictive viscometer reading model to obtain rheometer readings at any specified temperature.After determining the shear stress values at a set of six rotational speeds, the rheological parameters of different rheological models can be determined via regression.The conversion relationship between the rotational speed and the reading of a six-speed viscometer in terms of shear rate and shear stress is as follows: where τ is the shear stress (Pa), γ is the shear rate (1/s), θ is the reading of a six-speed viscometer (lb/100 ft2), and N is the rotational speed (1/min).
Therefore, a prediction of a six-speed viscometer reading is a prediction of shear stress at a given shear rate.After obtaining the predicted six-speed viscometer readings under a certain temperatures and pressures, the rheological model can be selected and the corresponding rheological parameters can be determined.
Since the variation in shear stress with temperature and pressure is different at different rotational speeds, corresponding prediction models need to be established.
The accuracy of nonlinear regression is greatly affected by the regression function.However, different drilling fluids may conform to different regression functions.This paper uses a parameter-free method for regression to expand the application range of the model.Parameter-free models do not make any special assumptions regarding the regression function, which makes them more flexible in terms of reducing bias.
Weighted linear regression, which introduces a weight function into the traditional linear regression model, was adopted in this paper.The mathematical expression for weighted linear regression is as follows: The coefficient matrix ϕ of the prediction point can be calculated via the following formula: where Y is the measured data and W is the weight coefficient; the weight function in this article uses a Gaussian kernel function.The Gaussian kernel function is a matrix with non-zero diagonal data only, and the expression of the Gaussian kernel function is as follows: where σ is the weight ratio, x is the temperature and pressure of the prediction point, and x i is the temperature and pressure of the actual data point.
After inputting the temperature and pressure conditions that need to be predicted, the corresponding weight coefficient and coefficient matrix can be calculated to obtain the prediction readings under this condition.
After obtaining the readings of the six-speed viscometer under the predicted temperature and pressure conditions, the rheological model of the drilling fluid can be determined through the traditional rheological model optimization method and the corresponding rheological parameters can be calculated.
For the problem studied in this article, the independent variables are the temperature and pressure values of the predicted point.The dependent variable is the shear stress value at the corresponding shear rate at the predicted point.In this article, there are 56 sets of experiments with the same shear rate, among which 14 sets of data with a pressure of 40 MPa and a temperature of 70 • C were selected as test data.Due to the presence of constant terms, the dimensions of each matrix are shown in Table 3.

Examples of Shear Stress Prediction
Changes in the value of independent variables can also cause changes in the weight matrix and coefficient matrix.Therefore, the model established in this article does not have a determined weight coefficient and a coefficient matrix.The matrix results of listing 14 test sets contain a huge amount of data, with the weight matrix of only 14 groups having a data volume of 3528.Therefore, this article takes the drilling fluid of the Tianan 1 well as an example under the conditions of 40 MPa, 70 • C, and a rotational speed of 600 rpm, and provides all matrix results.
As shown in Table 4, the prediction condition is 40 MPa, 70 • C, a constant item 1 is added to the independent variable matrix, and the measured result of the dependent variable is 100.064.Based on Table A1 in Appendix A, the data of the experimental condition matrix X and the experimental result Y were extracted, and the values on the diagonal of the weight matrix were calculated based on the input data and X, Y.The results are shown in Table 5.The coefficient matrix ϕ calculated based on the experimental condition matrix X, experimental result matrix Y, and weight matrix W are shown in Table 6.The prediction result of the prediction method established in this article is 99.228, and the actual measurement result is 100.084, with a relative error of 0.85%.
Similarly, the shear stress values of other rotational speeds can be calculated using the above process.

Parameter Determination
When the value of σ is different, the image of the Gaussian kernel function is also different.Figure 4 shows the image of the Gaussian kernel function when the value of σ is different.

Parameter Determination
When the value of σ is different, the image of the Gaussian kernel function is also different.Figure 4 shows the image of the Gaussian kernel function when the value of σ is different.It can be seen from the figure that the larger the value of σ, the wider the Gaussian kernel function.When the value of σ is larger, more data are used in the regression, and when σ is too large, the curve-fitting effect decreases.When the value of σ is small, the data used for the regression are closer to the prediction point, but a too-small σ value leads to the overfitting of the curve.
Therefore, by choosing an appropriate value for σ, the fitting effect of the weighted linear regression can be effectively improved.
If all regression data are directly used to verify the prediction results, the error of the model prediction is very low, and the impact of the model on non-measured values cannot be verified.Therefore, this paper extracted the data from 40 MPa of pressure and a temperature of 70 °C and did not participate in the regression of the model.We compared the advantages and disadvantages of each model through the performance of the model in It can be seen from the figure that the larger the value of σ, the wider the Gaussian kernel function.When the value of σ is larger, more data are used in the regression, and when σ is too large, the curve-fitting effect decreases.When the value of σ is small, the data used for the regression are closer to the prediction point, but a too-small σ value leads to the overfitting of the curve.
Therefore, by choosing an appropriate value for σ, the fitting effect of the weighted linear regression can be effectively improved.
If all regression data are directly used to verify the prediction results, the error of the model prediction is very low, and the impact of the model on non-measured values cannot be verified.Therefore, this paper extracted the data from 40 MPa of pressure and a temperature of 70 • C and did not participate in the regression of the model.We compared the advantages and disadvantages of each model through the performance of the model in two groups of non-training sets.
The average error of the model can be calculated using the following formula: where y * i is the predicted value and y i is the measured value.Taking the rheological experimental data of the Tianan 1 well as an example, the appropriate sigma value can be selected through the method of minimum average error.
After obtaining experimental data, the average error of the prediction method was calculated for sigma values between 0.1 and 1, with an interval of 0.1.The relative error is shown in Figure 5.It can be seen from Figure 5 that the overall average error decreases first and then increases with the increase in the value of σ.This is because when the value of σ is too large, the fitting of the curve is not good enough.When the value of σ is too small, the curve is overfitted, and the prediction performance for non-datasets is reduced.When σ is 0.7, the overall error is the smallest, so 0.7 is the optimal value.
The relationship between the measured value and the predicted value of the model at each speed when the value of σ is 0.7 is shown in Figure 6.It can be seen from the figure that the error between the predicted value and the true value of the readings for each rotating speed is predominantly within ±10%, and only the individual abnormal points with rotating speeds of 200 and 300 have large errors.The It can be seen from Figure 5 that the overall average error decreases first and then increases with the increase in the value of σ.This is because when the value of σ is too large, the fitting of the curve is not good enough.When the value of σ is too small, the curve is overfitted, and the prediction performance for non-datasets is reduced.When σ is 0.7, the overall error is the smallest, so 0.7 is the optimal value.
The relationship between the measured value and the predicted value of the model at each speed when the value of σ is 0.7 is shown in Figure 6.It can be seen from Figure 5 that the overall average error decreases first and then increases with the increase in the value of σ.This is because when the value of σ is too large, the fitting of the curve is not good enough.When the value of σ is too small, the curve is overfitted, and the prediction performance for non-datasets is reduced.When σ is 0.7, the overall error is the smallest, so 0.7 is the optimal value.
The relationship between the measured value and the predicted value of the model at each speed when the value of σ is 0.7 is shown in Figure 6.It can be seen from the figure that the error between the predicted value and the true value of the readings for each rotating speed is predominantly within ±10%, and only the individual abnormal points with rotating speeds of 200 and 300 have large errors.The model established in this paper has a good prediction effect on the readings of the drilling fluid viscometer.

Rheological Prediction
The prediction method of shear stress at each speed is established above.Based on the prediction results, the rheological mode and rheological parameters at a specified temperature and pressure can be determined via regression.The prediction process of drilling fluid rheology is as follows: (1) (Measure or collect the six-speed viscometer data of the drilling fluid that need to be predicted; (2) Determine the temperature and pressure that need to be predicted; (3) Calculate the weight matrix of 3 rpm, 6 rpm, 100 rpm, 200 rpm, 300 rpm, and 600 rpm under the specified temperature and pressure conditions based on Formula ( 5); (4) Calculate coefficient matrices of 3 rpm, 6 rpm, 100 rpm, 200 rpm, 300 rpm, and 600 rpm under specified temperature and pressure conditions based on Formula (4); ( 5) Calculate the readings of 3 rpm, 6 rpm, 100 rpm, 200 rpm, 300 rpm, and 600 rpm under the specified temperature and pressure conditions based on Formula (3); (6) Based on Formulas (1) and ( 2), convert the rotational speed and reading into shear rate and shear stress; (7) Based on the predicted results, the rheological parameters and corresponding errors of rheological models, such as the Bingham model, power law model, and H-B model, are calculated using the regression method; (8) By comparing the errors, select the rheological model with the smallest error as the rheological model under the temperature and pressure.

Example of Rheological Prediction
Based on the experimental data results of the Tianan 1 well, after removing the 40 MPa and 70 • C data, the rheological properties under this condition were predicted.
The experimental data can be found in Appendix Table A1, and the temperature and pressure at the predicted point are 70 • C and 40 MPa.The first and second steps of the prediction process have been completed.Section 3.2 describes how to predict the rheometer reading at a given temperature and pressure at a certain speed.Repeat this process until readings are predicted for all speeds at the specified temperature and pressure.Through Formulas (1) and ( 2), the rotational speed and reading are converted into shear rate and shear stress, and the predicted results are shown in Table 7.Based on the predicted shear stress, the rheological parameters and errors of the Bingham model, the Power-law model, the H-B model, the Ross model, the Carson model, and the four-parameter model were calculated using a regression method.Table 8 lists the functional forms of the six rheological models, the regression results of the rheological parameters under the predicted conditions, and the average deviation.
The Deviation of H-B model is the smallest, the value is 0.385.Therefore, the most accurate rheological model under this condition is the H-B model.

Model Comparison
The oil-based mud used in this paper conforms to the Bingham rheological model.Based on the experimental data, the values of plastic viscosity and static shear force at the corresponding temperature and pressure were calculated.The plastic viscosity and static shear force were predicted by the exponential model, the polynomial model, and the BP neural network, respectively.
Based on the predicted rheological parameters, the shear stress values at various rotational speeds under experimental conditions can be calculated.Due to the model established in this article directly predicting the shear stress values at six different rotational speeds, in order to compare the advantages and disadvantages of the model, the shear stress values at six different rotational speeds were calculated based on the three models.
The relationship between the shear stress predicted by different methods and the measured value is shown in Figure 7.The Deviation of H-B model is the smallest, the value is 0.385.Therefore, the most accurate rheological model under this condition is the H-B model.

Model Comparison
The oil-based mud used in this paper conforms to the Bingham rheological model.Based on the experimental data, the values of plastic viscosity and static shear force at the corresponding temperature and pressure were calculated.The plastic viscosity and static shear force were predicted by the exponential model, the polynomial model, and the BP neural network, respectively.
Based on the predicted rheological parameters, the shear stress values at various rotational speeds under experimental conditions can be calculated.Due to the model established in this article directly predicting the shear stress values at six different rotational speeds, in order to compare the advantages and disadvantages of the model, the shear stress values at six different rotational speeds were calculated based on the three models.
The relationship between the shear stress predicted by different methods and the measured value is shown in Figure 7.It can be seen from the figure that there are many prediction points with errors greater than 10% in the polynomial model, and the prediction points with errors greater than 10% in the polynomial model and the neural network model are significantly fewer than those in the rheological parameter model.The prediction points with errors greater than 10% in the model established in this paper are the fewest, and the whole prediction effect of the model established in this paper is the best.
At the same time, the average error of each method was calculated, and the results are shown in Figure 8.It can be seen from the figure that there are many prediction points with errors greater than 10% in the polynomial model, and the prediction points with errors greater than 10% in the polynomial model and the neural network model are significantly fewer than those in the rheological parameter model.The prediction points with errors greater than 10% in the model established in this paper are the fewest, and the whole prediction effect of the model established in this paper is the best.
At the same time, the average error of each method was calculated, and the results are shown in Figure 8.It can be seen from the above figure that the average error of the polynomial model is the largest.This is because the regression law of the drilling fluid rheology in this paper is closer to the exponential model, and the polynomial regression leads to the expansion of the error.Since the neural network model does not specify the regression function, the average error is close to the exponential model.The model in this article neither specifies the rheological model at the beginning of the prediction nor the regression function form used for the prediction, so the prediction results are more in line with the actual situation and have the smallest average error.Therefore, the method established in this paper can effectively improve the accuracy of the rheological prediction of drilling fluid under high temperature and high pressure.

Model Application
Based on the model established in this article, the bottom hole ECD of the Hu 6 well was calculated, and the basic information of the well is shown in Tables 9-11.It can be seen from the above figure that the average error of the polynomial model is the largest.This is because the regression law of the drilling fluid rheology in this paper is closer to the exponential model, and the polynomial regression leads to the expansion of the error.Since the neural network model does not specify the regression function, the average error is close to the exponential model.The model in this article neither specifies the rheological model at the beginning of the prediction nor the regression function form used for the prediction, so the prediction results are more in line with the actual situation and have the smallest average error.Therefore, the method established in this paper can effectively improve the accuracy of the rheological prediction of drilling fluid under high temperature and high pressure.

Model Application
Based on the model established in this article, the bottom hole ECD of the Hu 6 well was calculated, and the basic information of the well is shown in Tables 9-11.The error of the method established in this article for calculating ECD is 0.02 g/cm 3 , while the traditional method is 0.06 g/cm 3 .The ECD based on this method is more accurate.

Conclusions
Based on experiments and theoretical analysis, this paper studies the rheological properties of high-temperature and high-pressure drilling fluids and draws the following conclusions: (1) The rheological properties of oil-based drilling fluid used in three wells in an oilfield in Xinjiang were measured via conducting experiments, and the variation law of drilling fluid under high temperature and high pressure was analyzed.When the temperature is lower than 100 • C, the shear stress decreases faster, and when the temperature is higher than 100 • C, the shear stress decreases gradually.As the pressure increases, the shear stress increases gradually.When the pressure is lower than 80 MPa, the shear stress increases more slowly, and when the pressure is higher than 80 MPa, the shear stress increases faster.
(2) This paper presents a method for directly predicting the readings of a six-speed viscometer and then optimizing the rheological model.The model reduces errors caused by prioritizing rheological models in traditional prediction methods.At the same time, in view of the fact that different drilling fluids conform to different regression functions, this paper adopts a parameter-free method for regression prediction, which expands the scope of the application of the model.(3) The error between the shear stress and the measured value of different methods at certain shear rates was compared, and the results show that the model established in this paper had the best prediction effect and the smallest model error.This paper improves the prediction effect of oil-based drilling fluid rheology and provides theoretical support for accurate drilling hydraulic calculation.

Figure 1 .
Figure 1.Variation in rheological curve with temperature in the Tianan 1 Well.

Figure 1 .Figure 2 .
Figure 1.Variation in rheological curve with temperature in the Tianan 1 Well.

Figure 2 .
Figure 2. Variation in rheological curve with temperature in the Tianwan 1 Well.

(Figure 2 .
Figure 2. Variation in rheological curve with temperature in the Tianwan 1 Well.

Figure 2 .
Figure 2. Variation in rheological curve with temperature in the Tianwan 1 Well.

Figure 3 .
Figure 3. Variation in rheological curve with temperature in the Hu 6 well.

Figure 3 .
Figure 3. Variation in rheological curve with temperature in the Hu 6 well.

Figure 4 .
Figure 4. Gaussian kernel function image under different σ values

Figure 4 .
Figure 4. Gaussian kernel function image under different σ values.

19 Figure 5 .
Figure 5.Comparison of average error under different σ values.

Figure 5 .
Figure 5.Comparison of average error under different σ values.

19 Figure 5 .
Figure 5.Comparison of average error under different σ values.

Figure 6 .
Figure 6.Comparison between predicted value and actual value (σ = 0.7).It can be seen from the figure that the error between the predicted value and the true value of the readings for each rotating speed is predominantly within ±10%, and only the individual abnormal points with rotating speeds of 200 and 300 have large errors.The model established in this paper has a good prediction effect on the readings of the drilling

Figure 7 .
Figure 7.Comparison between predicted values and actual values of different models.

Figure 7 .
Figure 7.Comparison between predicted values and actual values of different models.

Figure 8 .
Figure 8. Error comparison chart of different methods.

Figure 8 .
Figure 8. Error comparison chart of different methods.

Table 2 .
High-temperature and high-pressure rheological test samples.

Table 3 .
Matrix meaning and matrix dimensions.

Table 4 .
Value of independent variables and experimental measurement results.

Table 5 .
Value of experimental condition matrix, experimental result matrix, and weight coefficient matrix.

Table 6 .
Coefficient matrix and prediction results.

Table 9 .
Well structure at 6880 m of the Hu 6 well.

Table 9 .
Well structure at 6880 m of the Hu 6 well.

Table 11 .
Construction parameters.The bottom hole ECD values calculated based on the methods established in this article, and traditional methods are shown in Table 12 below, which also lists the bottom hole ECD values measured by PWD.

Table 12 .
Calculation results of circulating pressure at 6880 m of Well H.

Table A2 .
Rheological experimental data of the Tianwan 1 well.