Nomenclature
- b
wingspan (m)
- ${C_{est.\;\left[ L \right]}}$
-
cost estimate using linear regression (M$)
- ${C_{est.\;\left[ {Corr} \right]}}$
-
cost estimate using correlation analysis (M$)
- ${C_{est.\;\left[ {p - value} \right]}}$
-
cost estimate using p-value analysis (M$)
- ${C_{est.\;x\;\left[ y \right]}}$
-
cost estimate where suffix x denotes Aircraft Type A, B, C, or D, and suffix y denotes Linear
-
regression (L), correlation analysis (Corr.) or p-value analysis (p-value) (M$)
- D f
-
fuselage diameter (m)
- F
-
fuel capacity (L)
- L f
-
aircraft length (m)
- M n
-
Mach number
- PAX
-
number of passengers (single class)
- R
-
range (km)
- S
-
wing area (m2)
- T
-
engine thrust (kN)
- ${W_{to}}$
-
maximum take-off weight (tonnes)
- λ
-
term coefficient in the correlation model
1.0 Introduction
Developing a new aircraft is a complex process since different design configurations have different technological and financial implications. Estimating the overall aircraft cost at the preliminary design stage is challenging using the standard cost forecasting techniques due to the lack of available sampled data. However, for the potential success of any aircraft program, the cost is considered a crucial indicator. In the early stages of the project, the program evaluation team is unlikely to know the design details and hence manufacturing implications. Amidst such uncertainties, assessing the viability of a program is a tricky task, which needs to be predicted accurately and timely. Consequently, a reliable estimating technique that enables cost-forecast is of high importance for any new commercial aircraft development. Availability of accurate costs decreases the risks associated with the program investment and enhances knowledge and accuracy, facilitating decision-making tasks [Reference Chen, Huang, Yi and Pan1]. Much of the cost estimation techniques are available for military aircraft; however, cost prediction models do not exist for commercial aircraft. If they do, they exist in a very rudimentary form. Therefore, it is necessary to develop a cost estimating technique for civil aircraft, which could be reliable amidst scant information and limited data, as an aid to evaluating the viability of new programs, as a function of critical parameters likely to have the most significant effect [Reference Xie, Yin and Hu2].
Methods for estimating the product cost in the fast-moving consumer goods market and general manufacturing are well established, but costs are unsuitable for predicting civilian aircraft due to small-scale production and the shortage of sample data. Insufficient information could lead to a sizable forecasting error using the common regression technique. It should be noted that several design parameters affect aircraft performance and costs. Moreover, predicting the production cost throughout the program development is desirable, as the key variables often change to reflect altered performance requirements. As the design complexity increases, the capital investment required for a successful program increases. Accordingly, the aircraft design process must accommodate design decisions based on the cost data and control the effective cost parameters during the design process to decrease the development cost. At the beginning of the design process, obtaining the cost is meaningful, as more than 70% of the aircraft cost lifecycle is assigned through the conceptual design phase [Reference Asiedu and Gu3].
Several methods for estimating aircraft cost have been put forward during the recent past. Researchers categorised these techniques into several approaches. Tirovolis et al. [Reference Tirovolis and Serghides4] categorised the existing techniques into two approaches: detailed cost accounting techniques [Reference Wu, Liu, Ding and Liu5] and parametric methods optimised for minimal cost [Reference Ross and Crossley6]. Castagne et al. [Reference Castagne, Curran, Rothwell, Price, Benard and Raghunathan7] categorised them into three approaches: detailed, parametric and analogous. In the first (detailed) approach, the material quantities and prices, the labour and rates, are estimated to determine the estimated direct costs of the activity or the product. More specifically, this approach requires considerable detailed information about the product, which turns out to be very costly and time-consuming, but it is the most accurate estimate. When the required work is decomposed into elementary activities, operations, or tasks to estimate the product cost, it is called Activity Based Costing (ABC). For estimation purposes, this technique (ABC) is effectively employed in the design stage as it is commonly utilised as a part of the total cost management [Reference Feng and Song8]. In the second (parametric) approach, the cost of a product is estimated using past data and trends used for forecasting purposes. The approach comprises estimating cost relationships developed and applied to obtain the relations between the measurable attributes/parameters, the schedule, and the cost [Reference Dean9]. In addition, this approach was further applied to estimate the design process cost [Reference Roy, Bendall, Taylor, Jones, Madariaga, Crossland, Hamel and Taylor10]. When using this technique, the cost estimates can be obtained quickly if the estimating cost relations are available.
In contrast, a significant effort is required for gathering past data and generating relationships. For products using up-to-date technologies, this approach is not well suited. The third (analogous) approach analogises with a similar existing product to estimate the cost. It works very well with novel products, but it requires a complete familiarity and expert judgement with the product [Reference Dunk11].
Recently, Xie et al. [Reference Xie, Yin and Hu2] categorised the cost estimating techniques into six approaches: simulation, equalisation engineering value rate, empirical estimation, analogy, engineering estimation and parametric estimation. The simulation approach can evaluate multiple aspects during the preliminary design phase. Its main shortcoming is that it requires expert experience in a variety of fields. The equalisation is applied in the feasibility demonstration stage having a template structure, but its outcomes are not well behaved for various reasons. The empirical estimation approach is fast and low-cost, mainly applied in the detailed design phase. One fundamental limitation is due to subjectivity [Reference Xie, Yin and Hu2]. However, analogy estimation is the simplest among these approaches, mainly when data are challenging to achieve or acquire. It is easy and less time-consuming to estimate the overall project cost. However, accuracy seems deficient due likelihood of two projects being the same [Reference Dunk11].
Lastly, the parametric estimation approach employs a mathematical model to extract the correlation between aircraft characteristics and development costs. It is based on statistical analysis, which requires parameters with significant effects to be assigned. This is followed by setting up the model technical performance factors and the historical cost data. Although the neural network approaches achieve successful estimation, they can recognise the relationship between the parameters and the development cost, but it has a poor estimation accuracy with limited data. In contrast, the engineering estimation approach is suitable for the latter stages of the design process, where the data are sufficiently refined [Reference Cai and Fang12]. For instance, the neural network was used to solve cost estimation challenges in the early civil building design process [Reference Ambrule and Bhirud13]. The researchers noticed that the estimation accuracy improves when the number of samples increases.
Furthermore, the neural network was combined with the regression technique to obtain a successful model for urban railways cost estimation [Reference Mahalakshmi and Rajasekaran14]. Unfortunately, the neural network has not successfully estimated the developing aircraft cost due to the shortage of information, the number of samples, and the difficulty of obtaining the relevant cost parameters. This paper presents the parametric cost analysis (PCA) to estimate the aircraft cost for various aircraft categories to overcome such issues. It is suited during the preliminary design phase. Both correlation and multiple linear regression techniques are employed in the PCA method to investigate the critical design parameters for establishing the cost models. A simple regression model, which is widely used as a first, easy, is also presented in this paper for comparison purposes and highlights the PCA model accuracy. A comparative summary of the presented techniques is also introduced.
It should be noted that the models developed in this paper for estimating the designed aircraft cost are based on adjusted prices for the year 2018. In general, all market measures, such as inflation/deflation, CPI, etc., directly affect the price of the new product. These measures can be factored appropriately after estimating the newly designed aircraft price. In a similar way, the new cost of new technologies that either result in a price increase or decrease can be accounted for by using an appropriate weighting factor.
2.0 Aircraft categories and design parameters
The first and foremost requirement to obtain accurate cost estimation models is to have current and accurate data. Since it is meaningless to estimate the cost of an old or retired aircraft as it has different characteristics (i.e. old technologies and different materials). Thus, all the aircraft used in this paper are not just in service, but also most are still in production.
The second consideration is that the sampled data should have similar design characteristics and features. Therefore, the sampled data, which are utilised for both developing and testing processes, are categorised into four categories based on size, as follows:
Large-size aircraft (category A): It includes only Airbus and Boeing aircraft. Characterised by long-range, the number of passengers is more than 250, two-aisles seat configuration, maximum take-off weight greater than 200,000kg, and total aircraft length greater than 50m.
Mid-size aircraft (category B): It includes mainly Airbus and Boeing aircraft. Characterised by medium-range, the number of passengers between 110 and 250, single-aisle seat configuration, maximum take-off weight greater than 50,000kg and less than 200,000kg, and total aircraft length in the range of 30 to 50m.
Small-size aircraft (category C): It is characterised by short-range, number of passengers between 70 and 110, single-aisle seat configuration, maximum take-off weight less than 50,000kg, and total aircraft length between 20 to 40m.
Personal aircraft (category D): It is characterised by a mainly very short-range, number of passengers less than 15, maximum take-off weight of less than 10,000kg, and total aircraft length of less than 15m.
Table 1 lists the utilised aircraft for establishing the estimating aircraft-cost models segregated into the four aircraft categories A, B, C, and D.
There is a dearth of information in the early stages of the preliminary aircraft design, especially pertaining to cost estimation, which is affected by many design choices and design parameters. There are many aspects of aircraft design in the conceptual and preliminary design stages that directly impact the final cost. Most of the choices and design parameters are correlated to each other to different degrees. The multi-collinearity issue occurs when two or more parameters are highly correlated. This issue makes selecting the most important parameters difficult or causes problems ranking them based on their importance. Thus, several regression techniques assume that the dataset is free of multi-collinearity. In contrast, multi-collinearity does not significantly impact selecting the design parameters, as this work does not apply the parameter-ranking issue. More specifically, these parameters are derived from either customer requirements or competitor analysis or may even be mandated by legislation. In aircraft design, weight, geometry and performance are the most significant issues to be considered. Maximum take-off weight (W to ) and fuel capacity (F) are selected to account for the weight. Wing area (S), wingspan (b), aircraft length (L f ), fuselage diameter (D f ), and the number of passengers (PAX) are selected to account for geometry. Lastly, range (R), maximum cruise speed (Mach number, M n ), and engine thrust (T) are selected to account for performance aspects. These selected parameters, which are described in the following, significantly impact almost every aspect of design and cost. Besides, they are likely to be known/evaluated during the conceptual design phase and/or available during the preliminary design phase.
The maximum take-off weight (W to , kg) is selected as the first parameter to be considered along with all design phases. The significance of this variable affects almost every aspect of aircraft performance, thrust loading, wing loading, take-off performance, climb and cruise performance, range, endurance, turning performance and other performance metrics. In addition, there are many methods for estimating the maximum take-off weight during the conceptual and preliminary design phases.
The number of passengers (PAX) is generally a variable available at the conceptual design phase as one of the critical requirements. The number of passengers determines, along with the fuselage diameter, determines the seating arrangement, and has a bearing on fuselage length. This variable has a pronounced effect on the aircraft cost, as the cost associated with the structure goes up. The indirect effect is the tail arm and its impact on dynamic and static stability, requiring larger tail volume coefficients, thereby increasing areas of the empennage and ultimately cost.
From an aircraft performance aspect, the aircraft range R (km) is also a design requirement when examining the Breguet Range Equation:
The range is affected by aerodynamics (flight speed (V) and gravity acceleration ( $g$ )), propulsion (SFC = fuel mass-flow rate/thrust), lift (L) and drag (D), and structures (initial weight $\;({W_0}$ ) and final weight (W f )). This translates to efficient engines and better aerodynamics, requiring boundary layer control, lower drag, a more robust structure with lower weights to yield a higher range and therefore increased aircraft cost.
Maximum cruise speed (Mach number, M n ) is selected, affecting the mission or stage time. Increasing this variable implies the availability of more excess power to accelerate the aircraft after overcoming the drag. Inevitably bigger engines with increased thrust are required, which implies more weight for the engines and the structure as the wing loading goes up. Maximum cruise speed depends not only on the thrust, but also on the drag, which needs to be reduced.
Engine thrust T (N) is also one variable available at the onset of the preliminary design stage. The thrust available limits the total drag that can be permitted, affecting the aerodynamic design, which also affects structural design to a large extent.
Aircraft length L f (m) is one of the leading design parameters, which is dependent on the number of passengers and aisle configuration, with standard fore and after body requirements.
Fuselage diameter D f (m), this variable is mainly dependent upon seating requirements.
The aircraft wing area S (m2) depends on wing loading that comes about from constraint analysis, requiring many simultaneous constraints to be met.
Wingspan b (m) has roots in the choice of aspect ratio and wing loading.
Fuel capacity F (L) needs to be determined. It affects the maximum take-off weight, affecting the range and performance of the aircraft. Due to volumetric storage requirements, the fuel capacity also affects the geometry of the aircraft wing and/or fuselage design.
3.0 The proposed approach
As mentioned earlier, there is a lack of information on the present-day civil and military aircraft cost. The last updated available data are that for Airbus (for the year 2018) and Boeing (for the year 2019), which are extracted from their official websites [15, 16]. For establishing accurate cost-estimation models, the year 2018 is set as the price basis in this paper. Note that the Airbus and Boeing aircraft prices are for the year 2018. They are listed in categories A and B are achieved from Ref. 17. For categories C and D, the aircraft prices are extrapolated from different websites, where the data is modified or updated to the year 2018. As mentioned earlier, to obtain the estimated aircraft price at the year of manufacture, all market measures and new technologies (increment/decrement) are factored appropriately after estimating the designed aircraft price, using the models presented in various categories.
In this paper, Parametric Cost Analysis (PCA) technique establishes the cost-estimation models for all aircraft categories [Reference Chen, Huang and Yi18]. PCA is a dimensionality reduction technique specifically designed to reduce several design parameters into a smaller set with extremely high accuracy. The proposed methodology employs grey correlation in conjunction with the p-value analysis, similar to Chen et al. [Reference Chen, Huang and Yi18]. More specifically, two main improvements were made to enhance the cost-estimation accuracy effectively. The first improvement is using extended sample data and classifying them into four categories based on the aircraft size. The second improvement is replacing some design parameters (so-called cost-driven factors), which are more efficient and aligned with customer requirements. As a result, the values of the design parameters are easily determined in the early stage of the conceptual design. In addition, these design parameters are strongly correlated with estimated aircraft cost, and any change in their values will result in changes in the estimated cost produced.
Moreover, each aircraft category results in very different prediction equations due to design complexities. Conventionally only maximum take-off weight was used in cost prediction; incorporating other design variables will significantly improve prediction accuracy and its ability to perform parametric trade-offs. The simple linear regression technique commonly used in terms of ($/kg) in many aircraft design textbooks is also presented here as a fast cost-estimation method and for comparison purposes.
3.1 Linear regression
Table 2 lists the current aircraft prices (as in the year 2018) with their relevant maximum take-off weights.
Simple linear regression is used to determine the best empirical model. The graphical representation of the data in Table 2 is shown in Fig. 1. The equation is determined to be:
${C_{est.\left[ L \right]}}\;\;$ is the cost estimate using linear regression.
This method is easy, fast, and commonly used as a primary estimating cost method in the conceptual design phase. Most modern aircraft design textbooks use this method to determine the aircraft price, mainly calculating the direct operating cost (DOC) [Reference Raymer19, Reference Kundu, Price and Riordan20]. The main disadvantage of this simple method is its poor accuracy. It is acceptable in the conceptual design phase; however, in the advanced stages of design, many trade-offs are needed. Each design trade-off has a cost implication, and better cost estimation models are necessitated to perform parametric analysis due to changes in the key variables. The ten key design variables listed in section 2 are assumed to have a considerable effect on the overall cost. It shall be seen later that not all variables are required to predict the cost. Only the variables that significantly impact the cost will be retained in the final models, since these variables are identified using correlation or p-value analysis.
3.2 Correlation analysis
Correlation analysis requires the correlation between system design parameters (independent variables) and the cost parameter (dependent variable) to be obtained and the degree of the correlation (ρ) between these design parameters. As mentioned in section 2, the ten design parameters for each aircraft category are utilised in this correlation analysis. The correlation degree has a value that varies between (−1) and (+1). The negative value (−1) means that the two parameters are entirely negatively correlated and vice versa. The range |1| ≥ ρ ≥ |0.7| is indicative of a strong correlation between any two parameters, respectively [Reference Chen, Yi and Huang21]. This paper only includes strongly correlated design parameters to the cost parameter. Next, linear multivariable regression is applied using these strong parameters to obtain the coefficients of the correlation model. It is noted that if any two design parameters have a strong correlation between them, then these parameters have a multi-collinearity feature, which in turn, affects the accuracy of the estimated model assumed to be of the form:
3.3 p-value analysis
The significance of every design parameter is determined via analysing the p-value of the regression model coefficients. The significance of the design parameter is high if it has a low p-value and vice versa. Note that eliminating low significant parameters will simplify the mathematical model. Analysing and determining the model using fewer parameters is much easier than the model of many parameters, as long as there is no appreciable decrease in the model accuracy.
However, this technique is an iterative procedure. The design parameter with the highest p-value is removed in each iteration if its value is above 0.05. The iteration procedure is stopped when all remaining design parameters in the current loop have p-values less than 0.05. These remaining parameters are utilised to establish the final regression model. For example, the first regression model comprises all ten design parameters. Due to the shortage of sample data in each category, the two design parameters with the lowest correlation degree are eliminated. Thus, the first regression model has only eight design parameters. Then, the second regression model includes only seven parameters after removing the one with the highest p-value. The third iteration will contain six, and so on. The procedure goes on until all parameters have p-values less than 0.05. The technique was applied to all aircraft categories in sequence. Each identified equation is of the form with one or more variables eliminated with p-values of >0.05.
4.0 Aircraft cost-estimation models
Each category has ten aircraft (input sample data). Values of the input design parameters of each aircraft category are listed in Table 3 [17, Reference Al-Shamma22]. These parameter values are employed to develop the estimated aircraft cost models using correlation analysis and multiple linear regression (p-value analysis). In addition, a simple regression model (Equation 2) is used to estimate the aircraft cost based on its maximum take-off weight for comparison purposes.
4.1 Correlation models
Based on the data presented in Table 3, the correlation analysis is applied first. For category A, the correlation matrix is shown in Table 4(a). The multi-collinearity feature is evident in the table, where several correlated coefficients between design parameters themselves have strong correlations (ρ > 0.7). These coefficients, presented in bold font in the table, show strong correlations, such as that noted between W to and PAX.
Interestingly, the range variable has very little correlation with aircraft price. On the other hand, the strongly correlated design parameters to the price parameter, recognised by the bold and underlined font in the table, are used to establish the equation of the correlation model (category A). The final correlation model for aircraft category A is:
A similar procedure was performed for the other aircraft categories. Tables 4(b), (c), and (d), show the correlation matrix for categories B, C and D, respectively.
Cost estimation Equations for Aircraft Categories B, C and D were determined as follows:
4.2 Multivariable regression models based on p-value
The main objective of applying multiple linear regressing is to reduce the number of the design parameters in the corresponding correlation model with acceptable error. This reduction simplifies the final model with fewer variables in predicting the aircraft cost, analysing the design parameters and speeding up the decision-making task. As mentioned earlier, each category has ten aircraft (samples). Thus, the total number of dependent and independent variables should be less than the sample number to perform the linear regression correctly. Because there is only one dependent variable (the cost), only eight design parameters are included in the first cycle of the p-value analysis. Therefore, two design parameters with the lowest correlation degrees should initially be eliminated for each category. For example, in category A, the fuselage diameter D f and the Mach number M n are removed, while the aircraft length L and the Mach number M n are removed in category B (see Table 4). The wingspan b and the fuselage diameter D f are removed for category C, whereas the wing area S (insufficient data available) and the fuselage diameter D f are removed in category D.
Therefore, only eight parameters are included in the first round of p-value analysis. Next, the design parameter that has the highest p-value is removed. Then, the next cycle is performed with one less variable. The process continues until all remaining design parameters have a p-value less than 0.05.
Starting with aircraft category A, the first cycle showed that the PAX parameter has the highest p-value (0.858). In the second cycle, the wingspan b parameter was removed. Then, the fuel capacity F and the range R were removed in subsequent cycles. The reduced cost equation was determined to be:
By similar procedure, cost equations determined for the other aircraft categories are computed to be:
5.0 Results and discussion
Equations (4)–(11) are used to estimate aircraft costs which are compared with the actual aircraft costs to determine the difference (error) between them, and the error percentage of each aircraft is additionally calculated, as listed in Table 5.
Several measures and indexes are available in statistical analysis to evaluate the cost-estimation performance of such models. The first measure is the mean error (ME), which denotes the average of all differences between the estimated values and the actual values. The second measure is the mean absolute error (MAE), which uses the absolute difference values between actual and estimated costs. Mean percentage error (MPE) is another measure that refers to the average of the percentage differences between the estimated and the actual values. The actual differences contain positive and negative values, which can cancel each other out; as a result, they can be used as a biased measure in cost estimations. The fourth measure is the mean absolute percentage error (MAPE), commonly utilised in the model evaluation due to its simplicity and convenience. Finally, the R-squared is an additional index utilised to obtain how the linear model fits the values of the parameters (or set of observations). The metrics of the models under consideration for all categories are listed in Table 6.
Examining Table 6 shows that the correlation model produces the best prediction, which achieves lower MAE and MAPE in the four categories. In contrast, the p-value model shows slightly better results in both ME and MPE for categories A and D. In addition, the correlation model achieved the highest R 2 in all categories. Conversely, the linear regression model is the worst in all measures. Understandably, the correlation model has the highest number of design parameters in establishing its model equations. In contrast, the p-value regression findings show minimal differences compared to the correlation findings. It produced sufficiently acceptable results for use in preliminary design. Thus, either the correlation or the p-value regression model can be used, depending on the availability of required parameters.
The percentage error values in Table 5 are considered to highlight the model’s accuracy in detail for all categories. For obtaining the overall error accuracies of the three models, the maximum and minimum percentage error values are extracted for all categories. The error accuracy is determined as the highest value between the Max and Min values. The variation range between the Max and Min values are listed, as well. Table 7 summarises these key statistical findings.
From Table 7, it is evident that the correlation regression models have the best error accuracies, typically less than ±3% for all aircraft categories. In contrast, the p-value regression models are also suitable for less than ±3% error. The difference between the two models is minimal, and it seems to be very close to each other. Therefore, both methods can be considered for early aircraft cost estimation. The p-value model is recommended since it has a lower number of design parameters. This finding certifies our earlier decision.
Figures 2 and 3 present the actual cost of the aircraft and the predicted cost using the models presented for aircraft categories A and B, respectively. Examination of these figures reveals that our cost-estimation models (correlation and p-value) are helpful during the preliminary design phase with minimal errors. The models presented constitute a significant advancement over the existing models used in cost estimation. As mentioned earlier, the linear regression model used in the past is presented here just for comparison purposes, mainly highlighting its inherent inaccuracies.
6.0 Case Studies
Confirming the suitability of the developed models, some sample data (aircraft data) other than that used in developing the estimated aircraft cost model are considered for testing. These sample data, which include two aircraft for each category with their design parameter values, are listed in Table 8. Using the data in Table 8, equation (2), and (4)–(11), estimated aircraft costs are calculated (as shown on the right-side of Figs 2 and 3 for categories A and B, respectively), subtracted from the actual aircraft costs to determine the difference (error), and the error accuracy percentage of each aircraft for the three models are calculated, as presented in Table 9.
The findings from the aircraft used for model validation indicate that p-value regression is better than the correlation model for categories A, C and D, with an error of less than ±3%. For category B, the correlation model is slightly better, but both models give an error of less than 4%. In general, most textbooks state that an error of less than 10% is acceptable and a cost prediction error of less than 5% is significantly good, considering that not much detail is available at the early design stages.
6.1 Model sensitivity
Investigating the sensitivity of the established models requires examining each mathematical model. The linear feature of the models simplifies the computation of the estimating cost and allows performing parametric studies of the design parameter changes on the estimated cost. The degree of each parameter impact is based on its coefficient. The highest coefficient value has the highest impact on the estimated cost, and vice versa. In addition, the positive coefficient sign means that the parameter is directly proportional to the estimated cost, while the negative coefficient sign means inversely proportional to the estimated cost. However, starting with category A, the correlation and the p-value models share the same four design parameters. The W to , L f , and S are directly proportional to the estimated cost, while the T parameter is inversely proportional to the estimating cost.
Moreover, the L f parameter has the highest coefficient value; therefore, it holds the highest impact. Increasing/decreasing the length by one meter means that the estimated cost will increase/decrease by 4.9M$, while a weight increment/decrement of one ton will cause a 1.9M$ increment/decrement in the estimated cost. The wing area has the lowest impact on the estimated cost.
In contrast, the W to has the highest coefficient (0.61) when considering category B. Notice that the PAX parameter has a coefficient value of around 0.3, but it holds the highest impact. Each additional passenger will increase the aircraft cost by one-third million dollars. In other words, the seat configuration of this category has six seats in each row (i.e. the cabin length and, in turn, the aircraft length will increase by around one meter); thus, the estimated cost will increase by around 2M$.
Category C shows that L f has the highest coefficient but with a negative sign. Therefore, a one-meter increase/decrease in aircraft length will decrease/increase the estimated cost by around three million dollars. In contrast, the PAX variable has a positive sign with a value of around 0.88. More specifically, increasing one meter in length will increase the number of passengers by four (one row). Hence, an increase in cost by around 0.5M$ is the net impact, while the W to will have the highest impact. Lastly, category D shows the same scenario as category C concerning L f and PAX variables. Besides, improving the engine consumption will increase the range with no additional fuel and reduce the estimated cost. For more accurate cost estimation, the parameters W to , T, S and M n are additionally included in the correlation model. Thus, we can conclude that the maximum take-off weight has a pronounced parameter impact on the estimated aircraft cost, and it should always be closely monitored during the whole design process.
7.0 Conclusions
This paper presented the empirical models for estimating the cost of civil aircraft using the parametric cost analysis, where both correlation and p-value regression techniques were performed. The sample data were categorised into four categories for obtaining accurate models based on aircraft size. In addition, ten design parameters were considered that have a significant impact on the aircraft design and, therefore, the eventual cost. Finally, the correlation and the p-value analyses were applied to determine the significant design parameters that affect the cost. Among the ten identified design parameters, the maximum take-off weight has the highest impact on most cost-estimation models. As a result, the developed models can predict cost-estimation at a preliminary design phase with an overall error better than ±4%, which is significantly better than the available methods and provides an ability to perform parametric studies involving key design variables at the preliminary aircraft design stage.