• 제목/요약/키워드: variable design parameter

검색결과 302건 처리시간 0.022초

한약재를 첨가한 오리부산물 추출액이 납과 수은에 노출된 흰쥐 혈청의 중금속 및 혈액지표에 미치는 영향 (Effect of Peking-Duck By-Product Extracts Supplemented with Medicinal Herbs on Serum Heavy Metal Levels and Blood Parameters of Rats Exposed to Lead and Mercury)

  • 박성혜;신언환;박성진;한종현
    • 한국식품영양과학회지
    • /
    • 제34권4호
    • /
    • pp.476-483
    • /
    • 2005
  • 본 연구는 오리 부산물 추출액과 영지, 가시오가피, 두충, 진피, 감국 및 대조를 섞어 만든 오리즙의 영양성분을 분석하고 이 오리즙을 납과 수은에 노출된 흰쥐에게 3가지 농도로 투여하여 혈청 내 중금속 농도의 변화 및 건강지표 parameters의 농도를 측정하여 중금속 피해 완화에 어느 정도 효과를 가질 수 있는지를 확인하여 건강보조식품으로 활용할 수 있는지의 여부를 판단하여 보고자 수행하였다. 뼈, 간 등 오리부산물과 6가지 한약재를 이용하여 만든 오리즙의 단백질 함량이 $49.92\%$, 섬유소 함량이 $37.02\%$로 구성되어 있어 중금속과 chelate를 형성하여 중금속 흡수를 억제할 수 있는 보조식품의 성분으로 바람직하다고 사료된다. 오리즙을 300 mg/mL를 투여 받은 군에서는 중금속의 노출에 의해 체중이 감소되는 현상을 완화시키는 결과를 나타내었고 혈액학적 성상 및 혈청의 여러 variables의 농도를 판단한 결과 오리즙이 비정상농도를 정상범위로 조절시켜 중금속에 의한 피해를 완화시켰다고 판단한다. 혈청 내 납과 수은의 농도는 오리즙을 mL당 30 mg, 300 mg 섭취 했을 때 유의적으로 감소되었다. 본 연구에서는 중금속 농도를 독성이 유발될 정도의 고농도가 아니라 유해한 환경속에서 현대인들에게 노출될 수 있는 정도로 혼합하여 투여하였다. 이 정도에 노출된 흰 쥐의 오리즙 섭취가 혈액의 여러 parameters의 농도를 완전하게 정상 범위내로 $100\%$회복되지는 못하였으나 축적 및 순환하는 양이 오리즙 섭취에 의해 감소되었음을 확인하였다. 또한 오리즙의 섭취량에 따라 정도의 차이도 나타났는데 1일 30 mg 이상을 섭취했을 때 중금속 노출에 대한 피해를 완화시킬 수 있는 것으로 나타났다. 이런 결과는 오리즙 중의 일정수준의 단백질, 아미노산과 선정된 약재의 성분 중 polyphenol 성분인 flavonoid가 착화합물형성 또는 화학흡착에 의해 체내 침착 억제 및 배설을 촉진시키는 작용에 의한 것으로 사료된다. 이 성분중 어느 것의 영향이 어느정도인지는 정확히 판단이 어려우므로 이런 결과를 뒷받침 할 수 있도록 각각 중금속별로, 농도별로 노출시켜 그 효과를 기대할 수 있는 성분들을 각각 작용시켜서 exposure and reaction design을 통한 좀 더 구체적인 연구도 필요하리라 생각되며 각 장기의 축적정도도 조사한다면 더욱 명확해질 수 있으리라 생각된다. 1일 30 mg이라는 양은 우리들이 섭취할 때는 80 mg(1포)에 해당하는 양이다. 따라서 사람에 따라 차이가 있을 수 있으나 일반적으로 꾸준히 1일 1포 이상의 섭취는 체내 중금속 농도를 감소시키는데 도움을 줄 수 있으리라 판단된다.

Memory Organization for a Fuzzy Controller.

  • Jee, K.D.S.;Poluzzi, R.;Russo, B.
    • 한국지능시스템학회:학술대회논문집
    • /
    • 한국퍼지및지능시스템학회 1993년도 Fifth International Fuzzy Systems Association World Congress 93
    • /
    • pp.1041-1043
    • /
    • 1993
  • Fuzzy logic based Control Theory has gained much interest in the industrial world, thanks to its ability to formalize and solve in a very natural way many problems that are very difficult to quantify at an analytical level. This paper shows a solution for treating membership function inside hardware circuits. The proposed hardware structure optimizes the memoried size by using particular form of the vectorial representation. The process of memorizing fuzzy sets, i.e. their membership function, has always been one of the more problematic issues for the hardware implementation, due to the quite large memory space that is needed. To simplify such an implementation, it is commonly [1,2,8,9,10,11] used to limit the membership functions either to those having triangular or trapezoidal shape, or pre-definite shape. These kinds of functions are able to cover a large spectrum of applications with a limited usage of memory, since they can be memorized by specifying very few parameters ( ight, base, critical points, etc.). This however results in a loss of computational power due to computation on the medium points. A solution to this problem is obtained by discretizing the universe of discourse U, i.e. by fixing a finite number of points and memorizing the value of the membership functions on such points [3,10,14,15]. Such a solution provides a satisfying computational speed, a very high precision of definitions and gives the users the opportunity to choose membership functions of any shape. However, a significant memory waste can as well be registered. It is indeed possible that for each of the given fuzzy sets many elements of the universe of discourse have a membership value equal to zero. It has also been noticed that almost in all cases common points among fuzzy sets, i.e. points with non null membership values are very few. More specifically, in many applications, for each element u of U, there exists at most three fuzzy sets for which the membership value is ot null [3,5,6,7,12,13]. Our proposal is based on such hypotheses. Moreover, we use a technique that even though it does not restrict the shapes of membership functions, it reduces strongly the computational time for the membership values and optimizes the function memorization. In figure 1 it is represented a term set whose characteristics are common for fuzzy controllers and to which we will refer in the following. The above term set has a universe of discourse with 128 elements (so to have a good resolution), 8 fuzzy sets that describe the term set, 32 levels of discretization for the membership values. Clearly, the number of bits necessary for the given specifications are 5 for 32 truth levels, 3 for 8 membership functions and 7 for 128 levels of resolution. The memory depth is given by the dimension of the universe of the discourse (128 in our case) and it will be represented by the memory rows. The length of a world of memory is defined by: Length = nem (dm(m)+dm(fm) Where: fm is the maximum number of non null values in every element of the universe of the discourse, dm(m) is the dimension of the values of the membership function m, dm(fm) is the dimension of the word to represent the index of the highest membership function. In our case then Length=24. The memory dimension is therefore 128*24 bits. If we had chosen to memorize all values of the membership functions we would have needed to memorize on each memory row the membership value of each element. Fuzzy sets word dimension is 8*5 bits. Therefore, the dimension of the memory would have been 128*40 bits. Coherently with our hypothesis, in fig. 1 each element of universe of the discourse has a non null membership value on at most three fuzzy sets. Focusing on the elements 32,64,96 of the universe of discourse, they will be memorized as follows: The computation of the rule weights is done by comparing those bits that represent the index of the membership function, with the word of the program memor . The output bus of the Program Memory (μCOD), is given as input a comparator (Combinatory Net). If the index is equal to the bus value then one of the non null weight derives from the rule and it is produced as output, otherwise the output is zero (fig. 2). It is clear, that the memory dimension of the antecedent is in this way reduced since only non null values are memorized. Moreover, the time performance of the system is equivalent to the performance of a system using vectorial memorization of all weights. The dimensioning of the word is influenced by some parameters of the input variable. The most important parameter is the maximum number membership functions (nfm) having a non null value in each element of the universe of discourse. From our study in the field of fuzzy system, we see that typically nfm 3 and there are at most 16 membership function. At any rate, such a value can be increased up to the physical dimensional limit of the antecedent memory. A less important role n the optimization process of the word dimension is played by the number of membership functions defined for each linguistic term. The table below shows the request word dimension as a function of such parameters and compares our proposed method with the method of vectorial memorization[10]. Summing up, the characteristics of our method are: Users are not restricted to membership functions with specific shapes. The number of the fuzzy sets and the resolution of the vertical axis have a very small influence in increasing memory space. Weight computations are done by combinatorial network and therefore the time performance of the system is equivalent to the one of the vectorial method. The number of non null membership values on any element of the universe of discourse is limited. Such a constraint is usually non very restrictive since many controllers obtain a good precision with only three non null weights. The method here briefly described has been adopted by our group in the design of an optimized version of the coprocessor described in [10].

  • PDF