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Article

Application of a Similarity Measure Using Fuzzy Sets to Select the Optimal Plan for an Air-Assisted Rice Seeder

1
Faculty of Engineering, Vietnam National University of Agriculture, Hanoi 12406, Vietnam
2
Institute of Agriculture, Division of Environmental and Agricultural Engineering, Tokyo University of Agriculture and Technology, 3-5-8 Saiwai-cho, Fuchu-shi, Tokyo 183-8538, Japan
*
Authors to whom correspondence should be addressed.
Appl. Sci. 2021, 11(15), 6715; https://doi.org/10.3390/app11156715
Submission received: 25 June 2021 / Revised: 10 July 2021 / Accepted: 19 July 2021 / Published: 22 July 2021
(This article belongs to the Section Agricultural Science and Technology)

Abstract

:
Air-assisted rice seeders were designed to perform sowing while ensuring the alignment and depth of seeds within the allowable standard range of 5–10 mm. Their performance varies on the basis of different specifications; thus, it is necessary to evaluate them to select the best one. Fuzzy set theory allows us to flexibly handle practical problems, especially applied problems in engineering. In this paper, a new similarity measure using fuzzy sets is proposed, and its advantages were tested using the technique for order preference by similarity to ideal solution (TOPSIS) method to select technical parameters for the sowing machines. The experiments allowed identifying the best results. The correlations between input attributes and decision variables were determined on the basis of their correlation coefficients with technical factors. The influence of technical factors on output results was also examined to determine the technical factors providing superior product quality.

1. Introduction

Rice direct seeding is used in paddy cultivation due to its low labor requirements and reduced production cost [1,2]. Air-assisted direct seeding machines were studied by Chosa et al. [1], Loan et al. [3], and Furuhata et al. [4], showing many advantages and promising working efficiency. These machines can operate across 32 rows powered by a tractor power take-off PTO. The hardness of the soil surface is a factor affecting the depth of sowing. The accuracy of sowing is controlled by a float installed to increase the area of ground–surface contact. A series of seeding machines, such as those of Iseki, Kubota, and Yanmar, have been marketed to meet the needs of sowing seeds in flooded paddy fields. These sowing machines can sow 6–8 rows at the same time in clusters [5].
The Tokyo University of Agriculture and Technology collaborated with the Vietnam National University of Agriculture to develop an air-assisted rice seeder for flooded paddy fields in Vietnam (Figure 1). This machine can sow 24 rows with an interval spacing of 20–25 cm. The experimental results showed that the seeding depth and seeding area precision were affected by the air-assisted velocity, internal diameter of the injection port, and distance between the injection port and soil surface. Seeding accuracy is one of the most important factors affecting the growth of paddy sprouts. In this study, a similarity measure using fuzzy sets was used to select the optimal plan for the sowing machines.
Fuzzy logic was first introduced by Zadel in 1965 [6]. Fuzzy set theory allows researchers to flexibly handle practical problems, especially applied problems in engineering [7,8]. For example, the fuzzy multi-criteria decision-making (MCDM) method was used to select machines [9], as well as evaluate reconfigurable machines [10].
In seeding machines, research studies have shown that the seeding depth allows ranges from 3–15 mm, preferably 5–10 mm for Vietnam rice variables, which is a prerequisite for seeds to thrive after sowing [11]. Trapezoidal fuzzy sets are considered the best option for the chosen situation, i.e., to select the optimal plan for sowing machines.
The contributions of this study are as follows: (1) a new similarity measure using fuzzy sets is proposed; (2) this measure is compared with existing similarity measures; (3) the TOPSIS method using the new measure is applied to evaluate the best scenario with respect to specifications of the sowing machine; (4) analysis of the obtained results led to a determination of the correlation coefficient between factors and decision variables in MCDM to interpret/evaluate the identified specifications.
The rest of this paper is organized as follows: Section 2 presents the problem to be solved, i.e., an estimation of the impact of technical parameters on the sowing machine. In this section, some important concepts regarding fuzzy sets and similarity measures of fuzzy sets are reviewed. Furthermore, the new similarity measures are proposed and compared with others from the literature. The TOPSIS model based on our proposed similarity measures is also introduced. In Section 3, the TOPSIS model is applied to evaluate the best scenario with respect to specifications of the sowing machine, and the results are presented. The results are discussed in Section 4, while Section 5 concludes the paper.

2. Materials and Methods

2.1. Sowing Machine Problem

In a sowing machine, the seeding depth and seeding area precision are affected by the air-assisted velocity, internal diameter of the injection port, and distance between the injection port and soil surface. Thus, there is a need to determine the parameters leading to optimal seeding accuracy in terms of a seeding depth of 3–15 mm (preferably 5–10 mm) and a seeding area precision within a diameter of 0–100 mm (preferably 50 mm).
Twenty-five experiments (E) were carried out on seeding machines to examine three variables: air-assisted velocity, internal diameter of the injection port, and distance between the injection port and soil surface (mm). The experimental results are given in Table 1. The expected outcome of this investigation was to determine the best output, suitable in terms of both the technical requirements and the agronomical requirements of rice seeds after sowing.
The assessment of influential factors was considered using an MCDM approach to analyze their correlations with the efficiency of sowing machines.
The considered attribute values are expected to satisfy both technical requirements and practical requirements. For example, the seeding depth (C7) allows a range of 3–15 mm (preferably 5–10 mm). This is a prerequisite for adequate seed growth and alignment after sowing. Thus, seeding area precision should primarily fall within a diameter of 50 mm (C4) (user requirement of 75% or more). No more than 5% of seeds should fall into the C5 or C6 regions. C4 can be considered a benefit criterion, whereas C5 and C6 can be considered damage (or cost) criteria. C1, C3, and C7 were not identified as benefit or cost criteria. In the case of C7, too shallow a depth would not meet the agronomic requirements, whereas too great a depth would lead to seed death, according to its biological characteristics.
Accordingly, we used fuzzy set theory to convert the original problem into a fuzzy MCDM problem taking into account the above requirements, whereby all criteria could be considered as the same type (i.e., as benefit criteria).

2.2. Fuzzy Sets and Similarity Measures

In this subsection, the concepts of fuzzy sets, as well as their operators and similarity measures, are reviewed.
In this paper, it is assumed that X = { x 1 , x 2 , , x n } is the universal set.
Definition 1
([6]). A fuzzy set A on the universal set X takes the form
A = { ( x i , μ A ( x i ) ) | x i X }
where μ A : X [ 0 , 1 ] is the membership function of the fuzzy set A , and μ A ( x i ) is the degree membership of the element x i in A for all i = 1 , 2 , , m .
For two given fuzzy sets, A = { ( x i , μ A ( x i ) ) | x i X } and B = { ( x i , μ B ( x i ) ) | x i X } on the universal set X , their operators are as follows:
+
Subset: A B if μ A ( x i ) μ B ( x i ) for all x i X ,
+
Equal: A = B if μ A ( x i ) = μ B ( x i ) for all x i X ,
+
Intersection: A B = { ( x i , min ( μ A ( x i ) , μ B ( x i ) ) ) | x i X } ,
+
Union: A B = { ( x i , max ( μ A ( x i ) , μ B ( x i ) ) ) | x i X } ,
+
Complement: A C = { ( x i , 1 μ A ( x i ) ) | x i X } ,
+
For all real numbers λ > 0 .
A λ = { ( x i , ( μ A ( x i ) ) λ ) | x i X } .
F ( X ) denotes a collection of all fuzzy sets on X .
Definition 2
([12]). Let A , B F ( X ) be two fuzzy sets on the universal set. A similarity measure of F ( X ) is the function S : F ( X ) × F ( X ) [ 0 , 1 ] , which satisfies the following conditions:
(S1) 
0 S ( A , B ) 1 for all A , B F ( X ) ,
(S2) 
S ( A , B ) = S ( B , A ) for all A , B F ( X ) ,
(S3) 
S ( A , B ) = 1 if A = B for all A , B F ( X ) ,
(S4) 
For all A , B , C F ( X ) , if A B C , then S ( A , C ) min { S ( A , B ) , S ( B , C ) } .

2.2.1. New Similarity Measure for Fuzzy Sets

Let X = { x 1 , x 2 , , x n } be a universal set. In this section, for all A , B F ( X ) , the similarity measure in Equation (2) can be considered.
Definition 3.
For all A F ( X ) , the real function S H : F ( X ) × F ( X ) [ 0 , 1 ] is defined as follows:
S H ( A , B ) = 1 n i = 1 n 2 2 | μ A ( x i ) μ B ( x i ) | 2 | μ A ( x i ) μ B ( x i ) | .
Proof. 
We consider the real function g ( t ) = 2 2 t 2 t , t [ 0 , 1 ] , to yield g ( t ) = 2 ( 2 t ) 2 < 0 for all t [ 0 , 1 ] . Thus, g ( 1 ) = 0 g ( t ) g ( 0 ) = 1 . This implies that 0 2 2 | μ A ( x i ) μ B ( x i ) | 2 | μ A ( x i ) μ B ( x i ) | 1 for all x i X . Accordingly, S H satisfies condition (S1).
It is easy to see that S H satisfies conditions (S2) and (S3) in Definition 2.
In the case of condition (S4), the real function g ( t ) = 2 2 t 2 t monotonically decreases for all t [ 0 , 1 ] . Thus, g ( t 2 ) = 2 2 t 2 2 t 2 g ( t 1 ) = 2 2 t 1 2 t 1 for all 0 t 1 t 2 1 . Now, assume that A B C ( A , B , C F ( X ) . Consider μ A ( x i ) μ B ( x i ) μ C ( x i ) for all x i X , such that 0 | μ A ( x i ) μ B ( x i ) | | μ A ( x i ) μ C ( x i ) | 1 for all x i X . This implies that 2 2 | μ A ( x i ) μ C ( x i ) | 2 | μ A ( x i ) μ C ( x i ) | 2 2 | μ A ( x i ) μ B ( x i ) | 2 | μ A ( x i ) μ B ( x i ) | for all x i X . Accordingly, S H ( A , C ) S H ( A , B ) , for all cases of A , B , C F ( X ) that satisfy A B C . In the same way, we obtain S H ( A , C ) S H ( B , C ) for all cases of A , B , C F ( X ) that satisfy A B C . Hence, for all A , B , C F ( X ) , if A B C , then S ( A , C ) min { S ( A , B ) , S ( B , C ) } . □

2.2.2. Comparison to Other Similarity Measures for Fuzzy Sets

To demonstrate the effectiveness of the newly proposed measure, we compare it with some existing measures through application to pattern recognition problems. First, we review some existing similarity measures for fuzzy sets.
Mondal et al. proposed the following in 2006 [13]:
S M R ( A , B ) = 1 ( i = 1 n | μ A ( x i ) μ B ( x i ) | 2 n ) 1 2 .
Pappis and Karacapilidis proposed the following in 1993 [14]:
S P K 1 ( A , B ) = 1 max x i X { | μ A ( x i ) μ B ( x i ) | } ,
S P K 2 ( A , B ) = 1 i = 1 n | μ A ( x i ) μ B ( x i ) | i = 1 n [ μ A ( x i ) + μ B ( x i ) ] ,
S P K 3 ( A , B ) = 1 i = 1 n | μ A ( x i ) μ B ( x i ) | n
S P K 4 ( A , B ) = max x i X ( μ A ( x i ) × μ B ( x i ) ) max ( i = 1 n ( μ A ( x i ) ) 2 , i = 1 n ( μ B ( x i ) ) 2 ) ,
S P K 5 ( A , B ) = i = 1 n min ( μ A ( x i ) , μ B ( x i ) ) i = 1 n max ( μ A ( x i ) , μ B ( x i ) ) .  
Raha et al. proposed the following in 2002 [15]:
S R P 1 ( A , B ) = 1 max x i X   min ( μ A ( x i ) , μ B ( x i ) ) max x i X   max ( μ A ( x i ) , μ B ( x i ) ) ,
S R P 2 ( A , B ) = min { i = 1 n μ A ( x i ) μ B ( x i ) i = 1 n max ( μ A ( x i ) , μ B ( x i ) ) 2 , i = 1 n ( 1 μ A ( x i ) ) ( 1 μ B ( x i ) ) i = 1 n max ( 1 μ A ( x i ) , 1 μ B ( x i ) ) 2 } .
Wang proposed the following in 1997 [16]:
S W 1 ( A , B ) = i = 1 n min ( μ A ( x i ) , μ B ( x i ) ) max ( μ A ( x i ) , μ B ( x i ) ) ,
S W 2 ( A , B ) = i = 1 n [ μ A ( x i ) μ B ( x i ) + ( 1 μ A ( x i ) ) ( 1 μ B ( x i ) ) ] i = 1 n [ ( μ A ( x i ) ) 2 + ( 1 μ A ( x i ) ) 2 ] i = 1 n [ ( μ B ( x i ) ) 2 + ( 1 μ B ( x i ) ) 2 ]
Lee-Kwang et al. proposed the following in 1994 [17]:
S L S ( A , B ) = max x i X   min ( μ A ( x i ) , μ B ( x i ) ) .
Pal et al. proposed the following in 2014 [18]:
S P M 1 ( A , B ) = i = 1 n min ( μ A ( x i ) , μ B ( x i ) ) max { i = 1 n μ A ( x i ) , i = 1 n μ B ( x i ) } ,
S P M 2 ( A , B ) = i = 1 n min ( μ A ( x i ) , μ B ( x i ) ) i = 1 n μ A ( x i ) ,
S P M 3 ( A , B ) = i = 1 n min ( μ A ( x i ) , μ B ( x i ) ) i = 1 n μ B ( x i ) ,
S P M 4 ( A , B ) = min { i = 1 n min ( μ A ( x i ) , μ B ( x i ) ) i = 1 n μ A ( x i ) , i = 1 n min ( μ A ( x i ) , μ B ( x i ) ) i = 1 n μ B ( x i ) } .
In pattern recognition problems, the similarity measures are used to classify the sample B into a class of given patterns A = { A 1 , A 2 , , A m } . Given a set of m patterns A = { A 1 , A 2 , , A m } , where A i is a fuzzy set on the universal set X , a new sample B also belongs to a fuzzy set on the universal set X .
Question: What class does B belong to?
To solve this problem, it is possible to use the similarity measures according to the two steps in Algorithm 1.
Algorithm 1 Solving pattern recognition problems using similarity measures.
Step 1. Calculate all similarity measures s ( B , A i ) from sample B to patterns A i for all i = 1 , 2 , , m .
Step 2. Classify sample B into pattern A i * with s ( A i * , B ) = max i = 1 , 2 , , m { s ( A i , B ) } .
Below, we consider two examples to compare the similarity measures.
Example 1.
Given a set of three patterns A = { A 1 , A 2 , A 3 } , A i ( i = 1 , 2 , 3 ) is a fuzzy set on the universal set X = { x 1 , x 2 , x 3 , x 4 } : A 1 = { ( x 1 , 0.2 ) , ( x 2 , 0.3 ) , ( x 3 , 0.1 ) , ( x 4 , 0.5 ) } , A 2 = { ( x 1 , 0.25 ) , ( x 2 , 0.4 ) , ( x 3 , 0.1 ) , ( x 4 , 0.6 ) } , and A 3 = { ( x 1 , 0.5 ) , ( x 2 , 0.3 ) , ( x 3 , 0.5 ) , ( x 4 , 0.4 ) } .
New sample B = { ( x 1 , 0.2 ) , ( x 2 , 0.3 ) , ( x 3 , 0.5 ) , ( x 4 , 0.6 ) } also belongs to a fuzzy set on the universal set X .
Question: What class does B belong to?
Result: Using Algorithm 1, the results shown in Table 2 can be obtained. In this case, it can be seen that our proposed similarity measure (Equation (2)), as well as 10 other similarity measures, assigned sample B to pattern A 3 . On the other hand, three measures (Equations (7), (9) and (13)) assigned sample B to pattern A 2 , whereas Equation (15) assigned sample B to pattern A 1 . Lastly, measure S P K 3 (Equation (6)) failed to classify sample B .
In Example 1, we can see that several measures were feasible, with most assigning sample B to pattern A 3 . In Example 2, several measures failed to classify sample B, whereas the majority (including the proposed measure) assigned sample B to pattern A 2 .
Example 2.
Given a set of three patterns A = { A 1 , A 2 , A 3 } , A i ( i = 1 , 2 , 3 ) is a fuzzy set on the universal set X = { x 1 , x 2 , x 3 , x 4 } : A 1 = { ( x 1 , 0.2 ) , ( x 2 , 0.3 ) , ( x 3 , 0.1 ) , ( x 4 , 0.5 ) } , A 2 = { ( x 1 , 0.5 ) , ( x 2 , 0.4 ) , ( x 3 , 0.4 ) , ( x 4 , 0.5 ) } , and A 3 = { ( x 1 , 0.5 ) , ( x 2 , 0.3 ) , ( x 3 , 0.5 ) , ( x 4 , 0.4 ) } .
New sample B = { ( x 1 , 0.5 ) , ( x 2 , 0.5 ) , ( x 3 , 0.8 ) , ( x 4 , 0.9 ) } also belongs to a fuzzy set on the universal set X .
Question: What class does B belong to?
Result: Using Algorithm 1, the results shown in Table 3 can be obtained. In this case, it can be seen that the measures S P K 4 (Equation (7)), S R P 1 (Equation (9)), S L S (Equation (13)), and S P M 2 (Equation (15)) failed to classify sample B . However, the proposed similarity measure (Equation (2)), as well as eleven other similarity measures, assigned sample B to pattern A 2 .
Examples 1 and 2 demonstrate the feasibility of our proposed similarity measure through application to classification problems. It was able to match or surpass the performance of the other measures identified in the literature when applied to recognition problems (Examples 1 and 2).

2.3. Fuzzy Similarity-Based MCDM

The MCDM problem involves selecting the optimal option from a set of m alternatives, P = { P 1 , P 2 , , P m } , according to n criteria C = { C 1 , C 2 , , C n } , in which P i = { ( C j , y i j ) | C j C } , y i j [ 0 , 1 ] for all i = 1 , 2 , , m ; j = 1 , , n . The relationship between m alternatives and n criteria can be represented in the form of a fuzzy decision matrix.
D = C 1 C 2 C n P 1 P 2 P m [ y 11 y 12 y 1 n y 21 y 22 y 2 n y m 1 y m 2 y m n ]
Next, TOPSIS was applied using the new similarity measure to solve this MCDM problem, as described in Algorithm 2.
Algorithm 2 The fuzzy similarity-based TOPSIS model
Step 1: Normalize the data table according to each criterion to obtain a fuzzy decision matrix.
Step 2: Determine weight of each criterion.
Step 3: Define the best option P + = { ( C j , y i j + = max i = 1 , , m y i j ) | C j C } and worst option P = { ( C j , y i j = max i = 1 , , m y i j ) | C j C } .
Step 4: Use Equation (2) to compute the similarity measures S i + and S i for each alternative P i   ( i = 1 , 2 , , m ) to identify P + and P , respectively.
Step 5. Determine the close coefficient C C i = S i + S i + + S i i   ( i = 1 , 2 , , m ) , whereby C C = { ( P i , C C i ) | P i P } can be considered the decision set of alternatives.
Step 6. Rank P i P k if C C i C C k for all i , k = 1 , 2 , , m .

2.4. Correlation Coefficient

To evaluate the strength of two independent variables, the correlation coefficient plays an important role in statistical analysis. Suppose that X = { X 1 , X 2 , , X m } and Y = { Y 1 , Y 2 , , Y m } are two independent observations; then, the correlation coefficient of variables X and Y is expressed as follows:
r ( X , Y ) = i = 1 m ( X i X ¯ ) ( Y i Y ¯ ) i = 1 m ( X i X ¯ ) 2 i = 1 m ( Y i Y ¯ ) 2 ,
where X ¯ = 1 m i = 1 m X i , Y ¯ = 1 m i = 1 m Y i , and 1 r ( X , Y ) 1 . If r ( X , Y ) 0 , then variables X , Y increase (decrease) simultaneously in the same direction. If r ( X , Y ) 0 , then variables X , Y increase (decrease) simultaneously in the opposite direction.

3. Results

Algorithm 2 was applied to solve the sowing machine problem, so as to select the parameters yielding the optimal seeding accuracy of the air-assisted rice seeder.
Step 1: The data table was normalized according to each criterion to obtain a fuzzy decision matrix.
+
Air-assisted velocity
y C 1 ( x ) = { x 3.5 1.5 if   3.5 x 5 7 x 2 if   5 x 7 0 if   o t h e r s
+
Internal diameter of injection port
y C 2 ( x ) = { x 10 5 if   10 x 15 20 x 5 if   5 x 20 0 if   o t h e r s
+
Distant between injection port and soil surface
y C 3 ( x ) = { x 70 80 if   70 x 150 1 if 150 x 200 250 x 50 if   200 x 250 0 if   o t h e r s
+
Seeding area precision (diameter 50 mm)
y C 4 ( x ) = { 0 if 0 x 60 x 60 20 if   60 x 80 1 if   80 x 100
+
Seeding area precision (diameter 100 mm)
y C 5 ( x ) = 100 x 100
+
Seeding area precision (diameter 150 mm)
y C 6 ( x ) = 100 x 100
+
Seeding depth
y C 7 ( x ) = { x 3 2 if   3 x 5 1 if 5 x 10 15 x 5 if   10 x 15 0 if   o t h e r s
Then, the normalized data shown in Table A1 (Appendix A) were obtained.
Step 2. The weight vector w = (0.025, 0.025, 0.025, 0.2, 0.025, 0.6) was chosen. Due to the requirements of the problem, the weight determined in the criterion of seeding depth was greatest to meet the criterion of accuracy within 50 mm.
Step 3: The best option and the worst option were determined, as shown in Appendix A (Table A1).
Step 4. Equation (2) was used to compute the similarity measures S i + and S i for each alternative P i   ( i = 1 , 2 , , m ) to identify P + and P , respectively. The results are shown in Table A2 (Appendix B).
Step 5. The close coefficient C C i = S i + S i + + S i i   ( i = 1 , 2 , , m ) was determined as shown in Table A2 (Appendix B) and Figure 2.
Step 6. Accordingly, the top five results could be ranked as E 8 E 4 E 19 E 12 E 22 .

4. Discussion

To further validate the results, the results were compared with other methods, namely, the Hamming distance measure (Figure 3), the Euclidean distance measure (Figure 4), and the fuzzy simple additional weighting (fuzzy SAW) method [19] (Figure 5). It was shown that the Hamming distance method and fuzzy SAW ranked the top five results identically to our proposed method ( E 8 E 4 E 19 E 12 E 22 ). On the other hand, the Euclidean distance measure ranked them slightly differently ( E 8 E 4 E 19 E 22 E 12 ). However, experiments E12 and E22 led to poor results, whereby E12 had 6% dispersion outside the 150 mm diameter, while the seed depth in experiment E22 exceeded the standard threshold of 5–10 mm, which would cause the seeds to rot. Therefore, in terms of practical application techniques, the top three results were E8, E4, and E19. The specifications and outputs of these options are shown in Table 4.
As can be seen in Table 4, when comparing seeding depth, the top four choices all met the agronomic requirements, whereas option 5 exceeded the optimal range. The seeding area precision of option 5 was highest; however, the seed depth in this case could lead to rotting paddy sprouts, thereby decreasing the germination rate. Therefore, option 5 is not recommended. On the other hand, option 1 presented the best seeding area precision at a diameter of 50 mm among the options with appropriate seeding depth.
The distance between the injection port and soil surface is also an influential factor. Too great a distance would lead to the seeding accuracy being easily affected by wind during sowing, whereas too small a distance would affect the working mode of the machine in the case of uneven fields.
The above analysis validates the selection order identified using Algorithm 2. The chosen weight vectors were varied to further confirm the above conclusion.
The correlation of each variable with the CC decision variable was also determined, corresponding to the above weight vectors, to determine their significance (i.e., hstqi denotes the correlation coefficient corresponding to weight wi (i = 1, 2, 3, 4, 5, and 6)) (See Table 5). This allows determining the factors contributing to product quality. It can be seen that, if the weight of the variable “seeding depth” is lower than 50%, the correlation coefficient of this variable becomes significantly worse; otherwise, its correlation coefficient exceeds 90% (see Figure 6 and Table 6). This is completely consistent with the actual requirements of the sowing machine applied in agriculture. The correlation coefficients of C1 and C3 were higher than those of C2, indicating their greater influence on the final result.

5. Conclusions

In this paper, a new similarity measure using fuzzy sets was proposed. It was proven to be superior to some existing metrics through numerical examples. Then, a TOPSIS model was constructed using this newly proposed measure to solve a multi-criteria decision-making problem, i.e., to evaluate the quality of a sowing machine’s specifications. The results obtained using the new measure and those obtained using classical measures were also compared. In the future, intuitionistic fuzzy sets [20] will be used to evaluate the quality of technical parameters. Furthermore, the results will be put into practice to evaluate sowing machine quality.

Author Contributions

Conceptualization, N.T.H., T.C. and S.T.; methodology, N.T.H., T.C. and S.T.; software, N.T.H. and N.T.-H.; validation, T.C. and S.T.; formal analysis, N.T.-H.; investigation, N.T.H. and N.T.-H.; resources, N.T.H. and N.T.-H.; data curation, N.T.H. and N.T.-H.; writing—original draft preparation, N.T.H.; writing—review and editing, T.C. and S.T.; visualization, N.T.-H.; supervision, T.C.; project administration, S.T.; funding acquisition, N.T.H. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

The data presented in this study are available on request from the corresponding author.

Acknowledgments

We would like to thank the Ministry of Science and Technology of Vietnam, the Vietnam National University of Agriculture, and the Tokyo University of Agriculture and Technology for support.

Conflicts of Interest

The authors declare no conflict of interest.

Appendix A

Table A1. The fuzzy decision matrix, highlighting the best option and the worst option.
Table A1. The fuzzy decision matrix, highlighting the best option and the worst option.
C1C2C3C4C5C6
E10.501.001.001.000
E20.50.3751.000.971.000
E30.511.000.811.000.6
E40.510.750.770.981
E50.500.000.600.920
E6101.000.991.000
E710.3751.000.911.000.6
E8110.950.791.001
E9110.500.740.960
E10100.000.550.880
E110.333301.000.811.000
E120.33330.3750.600.780.941
E130.333310.000.730.850
E140.333310.000.650.790
E150.333300.000.570.710
E160.501.000.981.000
E170.50.3751.000.921.000
E180.511.000.811.000.6
E190.510.650.780.951
E200.500.000.560.880
E210.333301.000.971.000
E220.33330.3751.000.891.000.8
E230.333310.800.800.960
E240.333310.350.730.940
E250.333300.000.540.870
P−0.3333000.540.710
P+111111

Appendix B

Table A2. The values of S+, S−, and CC metrics.
Table A2. The values of S+, S−, and CC metrics.
S+S−CC
E10.43330.6720.392
E20.45990.66170.41
E30.85310.41490.6728
E40.93350.25120.788
E50.11880.9880.1073
E60.44980.6520.4082
E70.84990.42930.6644
E80.98650.13790.8774
E90.39150.81230.3252
E100.13230.97010.12
E110.41980.68370.3804
E120.86960.34660.715
E130.16310.9410.1477
E140.15850.9450.1436
E150.10280.99920.0933
E160.43280.67290.3914
E170.45850.66370.4086
E180.85310.41490.6728
E190.91220.28740.7604
E200.1160.99030.1049
E210.42420.67780.3849
E220.89380.3360.7268
E230.43510.73540.3717
E240.32120.87460.2686
E250.106610.0963

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Figure 1. Image of an air-assisted rice seeder.
Figure 1. Image of an air-assisted rice seeder.
Applsci 11 06715 g001
Figure 2. Values of CC using newly proposed similarity measure.
Figure 2. Values of CC using newly proposed similarity measure.
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Figure 3. Values of CC using Hamming distance.
Figure 3. Values of CC using Hamming distance.
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Figure 4. Values of CC using Euclidean distance.
Figure 4. Values of CC using Euclidean distance.
Applsci 11 06715 g004
Figure 5. Values of CC using fuzzy SAW method.
Figure 5. Values of CC using fuzzy SAW method.
Applsci 11 06715 g005
Figure 6. Correlation coefficients between variables and the CC decision variable.
Figure 6. Correlation coefficients between variables and the CC decision variable.
Applsci 11 06715 g006
Table 1. Results of research on seeding accuracy.
Table 1. Results of research on seeding accuracy.
C1C2C3C4C5C6C7
E1612501000026
E2612100973017
E36121508119012
E4612200752326
E5612250524083
E651550991020
E7515100919012
E8515150792106
E9515200702843
E105152504345121
E11418508119016
E12418100722267
E134181505828153
E144182004435212
E154182502843291
E1661550982025
E17615100928015
E186151508119012
E19615200732255
E206152504444122
E2141550973015
E224151008911011
E2341515076403
E24415200672762
E254152504146131
Table 2. Classification results for Example 1.
Table 2. Classification results for Example 1.
Similarity Measures The Similarity Measures for Classifying Sample B in Patterns AiClassification Results
s ( A 1 , B ) s ( A 1 , B ) s ( A 3 , B )
Equation (3)0.91500.91380.9350 A 3
Equation (4)0.60000.60000.7000 A 3
Equation (5)0.81480.81360.8485 A 3
Equation (6)0.87500.86250.8750Null
Equation (7)0.40540.48650.3333 A 2
Equation (8)0.68750.68570.7368 A 3
Equation (9)0.833310.8333 A 2
Equation (10)0.64860.69670.7158 A 3
Equation (11)0.75830.68750.7667 A 3
Equation (12)0.93180.92850.9414 A 3
Equation (13)0.50000.60000.5000 A 2
Equation (14)0.68750.75000.8235 A 3
Equation (15)10.88890.8235 A 1
Equation (16)0.68750.75000.8750 A 3
Equation (17)0.68750.75000.8235 A 3
Equation (2)
(proposed measure)
0.92430.91790.9281 A 3
The maximum similarity measures are indicated in bold.
Table 3. Classification results for Example 2.
Table 3. Classification results for Example 2.
Similarity Measures The Similarity Measures for Classifying Sample B in Patterns AiClassification Results
s ( A 1 , B ) s ( A 2 , B ) s ( A 3 , B )
Equation (3)0.61000.80000.7727 A 2
Equation (4)0.30000.60000.5000 A 2
Equation (5)0.57890.80000.7727 A 2
Equation (6)0.60000.77500.7500 A 2
Equation (7)0.23080.23080.2051Null
Equation (8)0.40740.66670.6296 A 2
Equation (9)0.55560.55560.5556Null
Equation (10)0.40000.59020.5630 A 2
Equation (11)0.42010.71380.6674 A 2
Equation (12)0.69300.85900.8380 A 2
Equation (13)0.50000.50000.5000Null
Equation (14)0.40740.66670.6296 A 2
Equation (15)111Null
Equation (16)0.40740.66670.6296 A 2
Equation (17)0.40740.66670.6296 A 2
Equation (9)
(proposed measure)
0.7310.86180.8448 A 2
The maximum similarity measures are indicated in bold.
Table 4. Selection results with respect to optimal seeding accuracy.
Table 4. Selection results with respect to optimal seeding accuracy.
Selections1st2nd3rd4th5th
Air-assisted velocity (m/s)56644
Distant between injection port and soil surface (mm)150200200100100
Diameter of injection port (mm)1512151815
Seeding area precision, diameter 50 mm (%)7975737289
Seeding area precision, diameter 100 mm (%)2123222211
Seeding area precision, diameter 150 mm (%)02560
Seeding depth (mm)665711
Table 5. The top five results with differences in weight vectors.
Table 5. The top five results with differences in weight vectors.
Weight VectorsThe Top Three RankingMeaningCorrelation Coefficients
w1 = (0.025, 0.025, 0.025, 0.2, 0.1, 0.025, 0.6) E 8 E 4 E 19 Goodhstq1
w2 = (0.05, 0.05, 0.05, 0.2, 0.1, 0.05, 0.5) E 8 E 4 E 19 Goodhstq2
w3 = (0.05, 0.05, 0.05, 0.2, 0.05, 0.05, 0.55) E 8 E 4 E 19 Goodhstq2
w4 = (0.05, 0.05, 0.05, 0.2, 0.1, 0.5, 0.05) E 8 E 7 E 18 Badhstq4
w5 = (0.05, 0.05, 0.05, 0.5, 0.1, 0.05, 0.2) E 8 E 22 E 7 Badhstq5
w6 = (0.05, 0.05, 0.15, 0.25, 0.05, 0.05, 0.4) E 8 E 4 E 19 Pretty goodhstq6
Table 6. Correlation coefficients between variables and the CC decision variable.
Table 6. Correlation coefficients between variables and the CC decision variable.
hstq1hstq2hstq3hstq 4hstq 5hstq 6
C10.17570.20440.19940.27860.21780.1988
C20.09060.12650.11830.26710.20170.1389
C30.4270.45260.45830.28870.25630.567
C40.61910.65220.62140.95320.9540.6837
C50.40180.43730.40140.82140.80190.4765
C60.56280.5970.570.89450.8530.6241
C70.94550.92520.93980.50560.58590.8735
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Hai, N.T.; Chosa, T.; Tojo, S.; Thi-Hien, N. Application of a Similarity Measure Using Fuzzy Sets to Select the Optimal Plan for an Air-Assisted Rice Seeder. Appl. Sci. 2021, 11, 6715. https://doi.org/10.3390/app11156715

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Hai NT, Chosa T, Tojo S, Thi-Hien N. Application of a Similarity Measure Using Fuzzy Sets to Select the Optimal Plan for an Air-Assisted Rice Seeder. Applied Sciences. 2021; 11(15):6715. https://doi.org/10.3390/app11156715

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Hai, Nguyen Thanh, Tadashi Chosa, Seishu Tojo, and Ngo Thi-Hien. 2021. "Application of a Similarity Measure Using Fuzzy Sets to Select the Optimal Plan for an Air-Assisted Rice Seeder" Applied Sciences 11, no. 15: 6715. https://doi.org/10.3390/app11156715

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