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Article

Building Up of Fuzzy Evaluation Model of Life Performance Based on Type-II Censored Data

Department of Finance, Chaoyang University of Technology, Taichung 413310, Taiwan
Mathematics 2023, 11(17), 3686; https://doi.org/10.3390/math11173686
Submission received: 11 August 2023 / Revised: 22 August 2023 / Accepted: 24 August 2023 / Published: 27 August 2023

Abstract

:
The semiconductor industry is a rapidly growing sector. As collection technologies for production data continue to improve and the Internet of Things matures, production data analysis improves, thus accelerating progress towards smart manufacturing. This not only enhances the process quality, but also increases product lifetime and reliability. Under the assumption of exponential distribution, the ratio of lifetime and warranty has been proposed as a lifetime performance index for electronic products. As unknown parameters of the index, to use point estimates to assess lifetime performance may cause misjudgment due to sampling errors. In addition, cost and time limitations often lead to small sample sizes that can affect the results of the analysis. Type-II censored data are widely applied in production and manufacturing engineering. Thus, this paper proposes an unbiased and consistent estimator of lifetime performance based on type-II censored data. The 100(1 − α)% confidence interval of the proposed index is derived based on its probability density function. Overly small sample sizes not only make the length estimates of lifetime performance index intervals for electronic products too long, but they also increase sampling errors, which distort the estimation and test results. We therefore used the aforementioned interval to construct a fuzzy test model for the assessment of product lifetime and further help manufacturers to be more prudent and precise to evaluate the performance of product life cycles. A numerical example illustrates the applicability of the proposed model.

1. Introduction

The semiconductor industry is involved in the wafer manufacturing, integrated circuit (IC) design, packaging, and peripheral components necessary for end products such as smartphones, tablet computers, and smart internet end devices [1,2]. Industry clusters in Taiwan represent a crucial industry chain for consumer electronics worldwide [3,4,5,6]. Offering good product quality not only enhances its product lifespan and reliability, but also bolsters user satisfaction and willingness to use it [2,7]. As the collection technologies for production data continue to improve and the Internet of Things matures, production data analysis improves, thus accelerating progress toward smart manufacturing. This not only enhances the process quality, but also increases the product lifetime and reliability [8]. Furthermore, owing to the limitation of the cost and time, the estimation accuracy of the samples in the study leads to not being significant. Thus, in order to increase its estimation accuracy and eliminate the uncertain measurement data, confidence interval-based fuzzy evaluation models were built up via the confidence interval of indices in the study [9,10]. In order to prevent the risk of misjudgment caused not only by sampling errors but also by factoring in expert experiences and past data into consideration, it becomes necessary to increase the accuracy of each case with smaller sample sizes and analyze data with confidence intervals. Constructing a fuzzy test model to evaluate the product lifetime is also a way to compensate for sampling errors in small sample sizes [7,9].
As for product marketing, the term of warranty is shown to be a crucial index. Chen and Yu [11] indicated that whether customers feel satisfied with the products and be willing to use them lies in the good quality of the product with longer product lifetime and its reliability. Many researchers have confirmed the convenience and efficacy of process capability indices (PCIs) for the assessment of process quality in practice [12]. PCIs have also been applied to the lifetime and reliability of electronic products [13]. On the basis of some studies shown, it has been proved that ameliorating the process of quality check is able to shun off some unnecessary cost caused by the rework and defective products. Furthermore, it is also able to decrease energy consumption and carbon emissions [14,15]. It is of importance to manufacture all parts of the product with high quality. In order to make all the final products meet the quality standard, forming stringent requirements becomes necessary [16].
Additionally, in the industrial field, on account of the limitation of cost and time, noticing small-size samples implemented in the survey is not uncommon [17]. According to some previous studies conducted by the experts, it has been argued that utilizing the analyzing tool, fuzzy evaluation model, to analyze the sample with small data is able to make the result of the survey reach its reliability and validity [9,10]. Additionally, in order to lower the risk of misjudgment caused by sampling errors, putting interval estimates into practice has been proved to be much more accurate compared to the point estimates [7].
Product lifetime is exponentially distributed with mean λ . Tong et al. [18] proposed the following lifetime performance index C L :
C L = μ T L μ T = 1 L λ
where L denotes the minimum number of time units that the lifetime of each electronic component is required to reach, and parameter λ is the expected value μ T of the electronic component lifetime. We assume that the lifetime of the electronic component (T) follows an exponential distribution with the mean λ ; thus, the probability density function of T is as follows:
f T ( t ) = 1 λ e t λ ,   t   >   0
As noted by Chen and Yu [19], when the mean lifetime of the electronic component λ   L, then the lifetime performance index C L   0. Clearly, the greater the lifetime performance index C L is, the better its lifetime performance is. However, the warranty period of a product is generally only three years (L = 3), yet only when the mean lifetime λ approaches infinity does the lifetime performance index C L of the electronic component approach 1. This does not fit the conventions of the industry. Chen et al. [20] therefore proposed a relative lifetime performance index. This index is defined as follows:
β L = μ T L = λ L
As noted by Chen and Yu [19], the lifetime performance index is the ratio of λ and L. The one-to-one relationship between both index β L and C L is β L = ( 1 C L ) 1 . If the relative lifetime is X = T/L, then (1) when random variable X < 1, the lifetime of electronic component is denoted as equal to the warranty (T < L), (2) when random variable X = 1, the lifetime of the electronic component is denoted as equal to the warranty (T = L), (3) when random variable X > 1, the lifetime of the electronic component is denoted as longer than the warranty (T > L). Thus, X is the only value required for managers to assess if product lifetime is sufficient.
The probability density function of relative lifetime X is as follows:
f X ( x ) = 1 β L e x p x β L ,   x   >   0
Relative lifetime X is an exponential distribution with mean β L . Therefore, the failure rate is r X ( x ) = β L 1 and product reliability p r = S X ( 1 ) = exp β L 1 where S X ( x ) is the survival function of relative lifetime X as follows:
S X ( x ) = p X > x = e x p x β L ,   x   >   0
As pointed out by Chen et al. [21], the unknown parameters in the index decrease its accuracy if the point estimates are simply utilized to evaluate the data with small-size samples [7,19,21,22,23]. As the results of statistical tests tend to vary with sample size, censoring can be applied to achieve consistent results in a short time [22,23,24,25,26]. Type-II censoring is widely applied in production and manufacturing data. Thus, this paper proposes an unbiased and consistent estimator for the lifetime performance index β L based on type-II censored data. The 100(1 − α)% confidence interval of the index β L is derived based on its probability density function. Using this interval and the method proposed by Chen and Yu [19], a fuzzy test model is constructed to assess whether product lifetime performance reaches the required level. The application of the model proposed in the study is demonstrated through a numerical example. The final section presents our conclusions.
The rest of the present paper would be arranged as follows. In Section 2, we derive the estimator and find the confidence interval of the lifetime performance index. Section 3 presents the fuzzy test method for lifetime performance index. We employ an application to demonstrate the efficacy of the proposed approach in Section 4. Conclusions are given in Section 5.

2. Estimation of Ratio for Lifetime Performance Index

Incomplete data collection due to external or human factors during product development can reduce the reliability of analysis results. Censoring type is a form of data collection that is accurate as well as cost-effective and quick [14]. Censoring type can be divided into three types: type-I censoring, type-II censoring, and random censoring [27]. Type-II censoring is the most widely applied in production and manufacturing engineering [14,27]. Furthermore, type-II progressive censoring has become a common approach to the analysis of lifetime data for highly reliable products [14,28,29,30,31].
The proposed index must be estimated based on sample data. The lifetime T follows an exponential distribution with mean λ, denoted as T ~ e x p λ . The relative lifetime X = T/L is an exponential distribution with mean β L , denoted as X ~ e x p β L . T 1 , T 2 , , T n and X 1 , X 2 , , X n are random samples of T and X, respectively. Y 1 , Y 2 , , Y n is a sample set of the type-II censored data, Y j = m i n X j , X ( r ) = m i n T j / L , T ( r ) / L , j = 1, 2, …, n, where the number of uncensored data is denoted by r and the order statistics are denoted by X ( r ) and T ( r ) . The estimator β ^ L of β L is as follows:
β ^ L = λ ^ L = 1 r i = 1 n Y i
where
λ ^ = L r i = 1 n Y i
If random variable W =   2 r β ^ L / β L , according to Chiou and Chen [14], W follows a chi-square distribution with 2r degrees of freedom, denoted by W~ χ ( 2 r ) 2 . Therefore, the expected value of the estimator β ^ L is as follows:
E β ^ L = E W × β L 2 r = 2 r × β L 2 r = β L
β ^ L is an unbiased estimator of the lifetime performance index β L . Its variance is calculated as follows:
V a r β ^ L = V a r W × β L 2 r 2 = 4 r × β L 2 4 r 2 = β L 2 r
For large samples,
lim n E β ^ L β L 2 = lim n V a r β ^ L = lim r β L 2 r = 0
Based on Equations (8) and (10), β ^ L is an unbiased and consistent estimator of the lifetime performance index β L . The 100( 1 α )% confidence interval of the lifetime performance index β L is derived as follows:
1 α = p χ ( 2 r ) , 2 α / 2 W χ ( 2 r ) , 1 α / 2 2 = p χ ( 2 r ) , 2 α / 2 2 r β ^ L β L χ ( 2 r ) , 1 α / 2 2 = p 2 r χ ( 2 r ) , 1 α / 2 2 β ^ L β L 2 r χ ( 2 r ) , 2 α / 2 β ^ L
where χ ( 2 r ) , α / 2 2 is the lower α / 2 quantiles of χ ( 2 r ) 2 and χ ( 2 r ) , 1 α / 2 2 is the lower 1 − α / 2 quantiles of χ ( 2 r ) 2 . Therefore, the lower confidence of the lifetime performance index β L is
L β L = 2 r χ ( 2 r ) , 1 α / 2 2 β ^ L
Similarly, the upper confidence of the lifetime performance index β L is
U β L = 2 r χ ( 2 r ) , 2 α / 2 β ^ L
The length of the 100( 1 α )% confidence interval of the lifetime performance index β L is
l β L = U β L L β L = 2 r χ ( 2 r ) , α / 2 2 2 r χ ( 2 r ) , 1 α / 2 2 β ^ L
Since β ^ L is an unbiased estimator of the lifetime performance index β L , the following defines the expected length of the 100( 1 α )% confidence interval l β L :
E l β L = 2 r χ ( 2 r ) , α / 2 2 2 r χ ( 2 r ) , 1 α / 2 2 β L
For fixed (1 − α) × 100% = 95%, sample n = 100, r = 10 (10) 100, and β L = 1 (1) 5, the expected value E l β L is shown in Figure 1, where r = 10 (10) 100 indicates that the value of r begins at 10 and increases by 10 each time until its value equals 100. Similarly, index β L = 1 (1) 5 means that the value of the index β L begins at 1 and increases by 1 each time until its value equals 5.
Given confidence level ((1 − α) × 100%) and sample size n, the smaller the mean length of confidence interval E l β L is, the better estimation of the index β L under different numbers of uncensored data r is. As noted in Figure 1, when index β L is fixed, the mean length of the confidence interval E l β L is inversely proportional to the number of uncensored data r. This means that the better the estimate of the index β L is, the more uncensored data have been collected.

3. Fuzzy Test Method for Lifetime Performance Index

In this section, for the purpose of determining whether lifetime performance meets its requirement, a fuzzy test method is utilized. The hypothesis is H 0 : β L   c vs. H 1 : β L   < c [19], where c is the minimal value of relative lifetime performance index β L required by customers. The following statistical testing rules are taken into consideration:
(1)
If β ^ L   <   C R , then β L   < c (i.e., the null hypothesis is rejected).
(2)
If β ^ L     C R , then β L   c (i.e., the null hypothesis is not rejected).
C R is the critical value determined by
p β ^ L < C R β L = c H 0 = p W < 2 r C R c = α
Hence, C R can be calculated as follows:
C R = c χ ( 2 r ) , α 2 2 r
If we let y 1 , y 2 , , y n be the observed value of Y 1 , Y 2 , , Y n , then the observed value of the estimator is
β ^ L 0 = λ ^ 0 L = 1 r i = 1 n y i
where
λ ^ 0 = L r i = 1 n y i
As noted by Buckley [32], the α-cuts of triangular fuzzy numbers β ˜ L 0 are [19,22]
β ˜ L 0 α = β ^ L 01 α , β ^ L 02 α ,   for   0.01 α 1 β ^ L 01 0.01 , β ^ L 02 0.01 ,   for   0 α 0.01
where
β ^ L 01 α = 2 r χ ( 2 r ) , 1 α / 2 2 β ^ L 0
and
β ^ L 02 α = 2 r χ ( 2 r ) , α / 2 2 β ^ L 0
Obviously, the value of β ^ L 01 α is not equal to the value of β ^ L 02 α with α < 1. As α = 1, β ^ L 01 1   =   β ^ L 02 1   =   2 r χ ( 2 r ) , 0 . 5 2   β ^ L 0     β ^ L 0 .
Therefore, this paper let
β L 0 * = χ ( 2 r ) , 0 . 5 2 2 r β ^ L 0
Then, the α-cuts of new triangular fuzzy numbers β ˜ L 0 * are
β ˜ L 0 * α = β L 01 * α , β L 02 * α ,   for   0.01 α 1 β L 01 * 0.01 , β L 02 * 0.01 ,   for   0 α 0.01
where
β L 01 * α = χ ( 2 r ) , 0.5 2 χ ( 2 r ) , 1 α / 2 2 β ^ L 0
and
β L 02 * α = χ ( 2 r ) , 0.5 2 χ ( 2 r ) , α / 2 2 β ^ L 0
Obviously, the value of β L 01 * α is equal to the value of β L 02 * α with α = 1 ( β L 01 * 1   =   β L 02 * 1   =   β ^ L 0 ) and there is a new triangular fuzzy number, denoted as β ˜ L 0 * *   =   Δ β L 0 , β M 0 , β R 0 , where β M 0   =   β ^ L 0 ,
β L 0 = χ ( 2 r ) , 0.5 2 χ ( 2 r ) , 0.995 2 β ^ L 0
and
β R 0 = χ ( 2 r ) , 0.5 2 χ ( 2 r ) , 0.005 2 β ^ L 0
The following defines the membership function of fuzzy number β ˜ L 0 * * :
h ( x ) = 0             ,   i f   x < β L 0 2 1 F W β ^ L 0 x χ ( 2 r ) , 0 . 5 2   ,   i f   β L 0 x < β ^ L 0 1             ,   i f   x = β ^ L 0 2 F W β ^ L 0 x χ ( 2 r ) , 0 . 5 2     ,   i f   β ^ L 0 < x β R 0 0             ,   i f   θ R 0 < x
where the cumulative distribution function of random variable W is denoted by F W . Similarly to fuzzy numbers β ˜ L 0 * , the α-cuts of triangular fuzzy critical values C ˜ R are
C ˜ R α = C R 1 α , C R 2 α ,   for   0.01 α 1 C R 1 0.01 , C R 2 0.01 ,   for   0 α 0.01
where
C R 1 α = χ ( 2 r ) , 0.5 2 χ ( 2 r ) , 1 α / 2 2 C R
and
C R 2 α = χ ( 2 r ) , 0.5 2 χ ( 2 r ) , α / 2 2 C R
Obviously, the value of C R 1 α is equal to the value of C R 2 α with α = 1 ( C R 1 1   =   C R 2 1   =   C R ) and the new triangular fuzzy number is C ˜ 0   =   Δ C L R , C M R , C R R , where C M R   =   C R ,
C L R = χ ( 2 r ) , 0.5 2 χ ( 2 r ) , 0.995 2 C R
and
C R R = χ ( 2 r ) , 0.5 2 χ ( 2 r ) , 0.005 2 C R
The following defines the membership function of fuzzy C ˜ R :
g ( x ) = 0             ,   i f   x < C L R 2 1 F W C R x χ ( 2 r ) , 0 . 5 2   ,   i f   C L R x < C R 1             ,   i f   x = C R 2 F W C R x χ ( 2 r ) , 0 . 5 2       ,   i f   C R < x C R R 0             ,   i f   C R R < x
As noted, the cumulative distribution function of random variable W is denoted by F W . Membership functions h ( x ) and g ( x ) are presented in Figure 2:
Based on Chen and Yu [19], this paper let set B T be the area under the graph of g ( x ) . That is,
B T = x , α C R 1 α x C R 2 α , 0 α 1
As noted by Chen and Chang [13] and Chen and Yu [19], it is difficult to use integration to calculate the area of a set B T . The approach, trapezoidal rule, is implemented in the study in order to build up the area of the block B T . The procedures are following: (1) we classify the block B T , n = 100, into several equal horizontal blocks. (2) Each section of the blocks would be calculated through the approximate trapezoid area. Then, (3) the sum of the areas for these 100 horizontal blocks is calculated. For this reason, i = [100 ×   α ] is considered. Then, i = 0, 1, 2, …, 100 for 0   α   1, where [100 ×   α ] represents the largest integer less than or equal to 100 ×   α . Similarly, α   = i × 0.01, i = 0, 1, 2, …, 100. These 101 horizontal lines are cut B T into 100 trapezoidal blocks. Then, the following denotes the ith block:
B T i = x , α C R 1 0.01 × i x C R 2 0.01 × i , 0.01 × i 1 α 0.01 × i ,   i =   1 ,   ,   100
The following definition for the length of ith horizontal line d i as follows:
d i = χ ( 2 r ) , 0.5 2 χ ( 2 r ) , 0.005 × i 2 χ ( 2 r ) , 0.5 2 χ ( 2 r ) , 1 0.005 × i 2 C R ,   i =   1 ,   2 ,   ,   100
Obviously, d 0 = d 1 and d 100 = 0, so the area B T is
B T = i = 1 100 ( 0.01 ) × d i 1 + d i 2 = 0 . 01 d 1 2 + i = 1 99 d i
If B R denotes the area under graph g ( x ) to the right of x   =   β ^ L 0 , then
B R = x , α β ^ L 0 x C R 2 ( α ) , 0 α a
where α = a such that C R 2 ( a )   =   β ^ L 0 . Similarly B T , k = [100 × a]. Then, for 0   α   a, where [100 × a] represents the largest integer less than or equal to 100 × a. Obviously, a = 0.01 × k and α   = i × 0.01, (i = 0, 1, 2, …, k) horizontal lines cut B R into k trapezoidal blocks. Then, the ith block can be expressed as follows:
B R i = x , α β ^ L 0 x C R 2 ( 0.01 × i ) , 0.01 × i 1 α 0.01 × i ,   i =   1 ,   2 ,   ,   k
The following defines the length of ith horizontal line r i :
r i = χ ( 2 r ) , 0.5 2 χ ( 2 r ) , 0.005 × i 2 C R β ^ L 0 ,   i =   1 ,   2 ,   ,   k
This indicates that r 0 = r 1 and r k = 0 , so the area of B R is
B R = i = 1 k ( 0.01 ) × r i 1 + r i 2 = 0.01 r 1 2 + i = 1 k 1 r i
The ratio of B R / B T can be usefully applied to fuzzy decision-making:
B R / B T = 0 . 01 r 1 2 + i = 1 k 1 r i 0 . 01 d 1 2 + i = 1 99 d i
However, calculation of B R / B T is complicated.
According to Equations (39) and (43), these have calculated that, respectively, obtaining the block areas of B T and B R is extremely complicated. Therefore, for the purpose of simplifying the complicated calculating process of ratio B R / B T , the technique, membership functions g ( x ) and h ( x ) with asymmetry (in Figure 2), proposed by Chen and Chang [13] is utilized in the present study. The method suggested by Chen and Chang [13], to replace d R (the length of the base of the set B R ) with the area of B R , facilitates industrial applications. Similarly, d T (the length of the base of the set B T ) is replaced with the area of B T . As the membership functions are asymmetric, d T   = 2( C R R     C R ) on the basis of Chen and Chang [13] and Chen et al. [20]. In Figure 2, by using the principle of similar shapes, the square of the side length ratio is equal to the area ratio. Next, B R / B T was replaced with d R / d T as the fuzzy evaluation tool, where d R and d T are calculated as follows [13,20,33]:
d R = C R R β ^ L 0 = χ ( 2 r ) , 0.5 2 χ ( 2 r ) , 0.995 2 C R β ^ L 0
and
d T =   2 ( C R R C R = 2 χ ( 2 r ) , 0.5 2 χ ( 2 r ) , 0.005 2 C R C R
Based on their past experiences originating from other experts and the past data over the certain products [34], manufacturing engineers are allowed to define the values of δ 1 and δ 2 . The following two numbers 0 < δ 1 < δ 2 < 0.5 and δ = d R / d T , the fuzzy test rules are as follows [13,20,35]:
(1)
If δ   <   δ 1 , then conclude that β L   c (i.e., do not reject H 0 ).
(2)
If δ 1     δ     δ 2 , then make no decision; more information is needed.
(3)
If δ 2   <   δ   < 0.5, then conclude that β L < c (i.e., reject H 0 ).

4. Practical Example

This section presents a numerical example to demonstrate the proposed fuzzy test method. The required value of the lifetime performance index is at least 3; thus, the null hypothesis is H 0 : β L   3 vs. the alternative hypothesis H 1 : β L   < 3 [19]. If y 1 , y 2 , , y 30 is the observed value of Y 1 , Y 2 , , Y 30 with number of the uncensored data r = 18 (r/n = 60%), then the observed value of the estimator is
β ^ L 0 = 1 r i = 1 n y i = 41.6894 18 = 2.316
The values of β L 0 and β R 0 are then calculated as follows:
β L 0 = χ ( 18 ) , 0.5 2 χ ( 18 ) , 0.995 2 ×   2.316   =   1.329
and
β R 0 = χ ( 18 ) , 0.5 2 χ ( 18 ) , 0.005 2 ×   2.316   =   4.576
Furthermore, the membership function of fuzzy numbers β ˜ L 0 * * is
h ( x ) = 0               ,   i f   x < 1 . 329 2 1 F W 1 . 3290 x × χ ( 36 ) , 0 . 5 2   ,   i f   1 . 329 x < 2 . 316 1               ,   i f   x = 2 . 316   2 F W 1 . 3290 x × χ ( 36 ) , 0 . 5 2      ,   i f   2 . 316 < x 4 . 576   0               ,   i f   4 . 576 < x
where χ ( 36 ) , 0 . 005 2 = 17.887, χ ( 36 ) , 0 . 995 2 = 61.581, and χ ( 36 ) , 0 . 5 2 = 35.336. As the significance level is α = 0.05, then
C R = c χ ( 2 r ) , α 2 2 r = 3 χ ( 36 ) , 0.05 2 36 =   1.939
The values of C L R and C R R are calculated as follows:
C L R = χ ( 36 ) , 0.5 2 χ ( 36 ) , 0.995 2 ×   1.9391   =   1.113
and
C R R = χ ( 36 ) , 0.5 2 χ ( 36 ) , 0.005 2 ×   1.9391   =   3.831
Furthermore, the membership function of fuzzy number C ˜ R is
g ( x ) = 0              ,   i f   x 1 . 113 2 1 F W 1 . 9391 x χ ( 36 ) , 0 . 5 2   ,   i f   1 . 113 < x < 1 . 939 1              ,   i f   x = 1 . 939   2 F W 1 . 9391 x χ ( 36 ) , 0 . 5 2      ,   i f   1 . 939 < x 3 . 831   0              ,   i f   3 . 831 < x
By Equations (50) and (54), we have the graphs of h ( x ) and g ( x ) in Figure 3. From Equation (54), we obtain α = g ( x ) . When x = β ^ L 0 = 2.316, α ∈ (0.46, 0.47), a = 0.468 could be obtained by interpolation method.
The values of d R and d T are calculated as follows [13,20,33]:
d R = C R R β ^ L 0 =   3.831   2.316   =   1.515
and
d T =   2 ( C R R C R ) =   2 ( 3.831   1.939 )   =     3.784
Therefore,
δ = d R / d T =   1.515 / 3.784 =   0.4004
This leads to the conclusion that for β ^ L 0 = 2.316 > C R = 1.939, β L   3 (i.e., the null hypothesis should not be rejected). However, β ^ L 0 = 2.316 is far less than β L = 3. Thus, for δ 1 = 0.2 and δ 2 = 0.4 [13], β L < 3 (i.e., the null hypothesis should be rejected). This is the risk of misjudgment caused by sampling errors in small sample sizes [7,9]. The proposed fuzzy method therefore provides a more reasonable conclusion.

5. Conclusions

This paper proposes an evaluation approach for product lifetime performance under type-II censoring. This evaluation enables the improvement of lifetime performance, which enhances the value of products as well as attains green goals such as energy efficiency and waste reduction. The proposed index is easy to use as its value increases with performance. Examination of the probability density function, cumulative distribution function, and reliability function of relative lifetime X indicated that reliability increased with the value of the index, as did the probability of the product lifetime surpassing the minimum with value L. An unbiased consistent estimator of the proposed index is also presented alongside a fuzzy test model based on the derived confidence interval. This model reduces the probability of misjudgment caused by sampling errors [7,9]. Additionally, many benefits will be gained by seizing the chance to improve, such as decreasing the testing cost and meeting the certain requirements in a short time. Furthermore, doing so is said to expand the possibility of using less paper, saving social resources, decreasing the carbon footprint and so forth [36]. In the electronics industry, passive components have long been indispensable parts that stimulate peripheral equipment industries. The proposed model thus focuses on passive components, with applicability demonstrated through a numerical example.

Funding

This research received no external funding.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Not applicable.

Conflicts of Interest

The author declares no conflict of interest.

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Figure 1. E l β L curves for β L = 1 (1) 5, r = 10 (10) 100, and α = 0.05.
Figure 1. E l β L curves for β L = 1 (1) 5, r = 10 (10) 100, and α = 0.05.
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Figure 2. Membership functions h ( x ) and g ( x ) .
Figure 2. Membership functions h ( x ) and g ( x ) .
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Figure 3. Membership functions g ( x ) and h ( x ) for numerical example.
Figure 3. Membership functions g ( x ) and h ( x ) for numerical example.
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Chiou, K.-C. Building Up of Fuzzy Evaluation Model of Life Performance Based on Type-II Censored Data. Mathematics 2023, 11, 3686. https://doi.org/10.3390/math11173686

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Chiou K-C. Building Up of Fuzzy Evaluation Model of Life Performance Based on Type-II Censored Data. Mathematics. 2023; 11(17):3686. https://doi.org/10.3390/math11173686

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Chiou, Kuo-Ching. 2023. "Building Up of Fuzzy Evaluation Model of Life Performance Based on Type-II Censored Data" Mathematics 11, no. 17: 3686. https://doi.org/10.3390/math11173686

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