N | HOC-ADI Method [20] | FVM [7] | Present method | C.R. |
4×4 | 6.12E-3 | 4.92E-2 | 9.892E-3 | – |
6×6 | 1.68E-3 | 2.05E-2 | 4.319E-4 | 3.8613 |
8×8 | 7.69E-4 | 1.27E-2 | 9.758E-6 | 6.5873 |
10×10 | 4.40E-4 | 9.20E-3 | 1.577E-7 | 9.2432 |
The majority of stroke survivors suffer from physical and mental disabilities. This causes social and economic burdens, and it is regarded as a major source of morbidity and the second leading cause of death worldwide. This study aims to quantify the incidence of cerebrovascular stroke in the Taif region, identify risk factors for CVA, and raise awareness about modifiable risk factors.
Over 17 months period (February 2020 to June 2021), all first-stroke patients admitted to Alhada military hospital and King Faisal hospital in Taif region were included. Stroke patients from outside the Taif region were excluded from participating in the study. Age, gender, domicile, employment, history of hypertension, diabetes, cardiac diseases, smoking, previous history of stroke or transient ischemic episodes were all obtained from the patient's files. Also, a history of medications, particularly anticoagulants and contraceptive tablets if a female in childbearing age.
Overall, the study included 404 patients, 40.6% of whom were females and 59.4% of whom were males, with a mean age of 64.0 ± 14.9 years. The most common type of CVA was ischemic stroke (78.5%), followed by TIA (11.9%), and hemorrhagic stroke (7.2%). Slurred speech was the most commonly reported chief symptom among stroke survivors (23%), followed by dizziness (13.6%), left-sided weakness (10.9%), and right-sided weakness (10.9%). The incidence of stroke is increasing in patients who had chronic diseases like hypertension which is 62.6% survival had, and the second most common lead to stroke and decreased elasticity of vessels is diabetes mellitus 60.4% followed by ischemic heart disease 9.4% and smoking 5.4%.
Finally, using a prospective clinical study, the incidence of first time CVA in Taif was higher in males (about 59.4%) than in females (40.6%). That indicates a strong relation between Diabetes which represents 60.4%, Hypertension was 62.6% and age 18–55. We suggest running campaigns that target people with these risk factors to reduce the possibility of CVA occurrence.
Citation: Ola Shawky, Maha Alkhaldi, Deema Yousef, Adnan Alhindi, Teef Alosaimi, Amjad Jawhari, Aliah Aladwani. Incidence of first-time stroke in Taif, Saudi Arabia[J]. AIMS Medical Science, 2022, 9(2): 293-303. doi: 10.3934/medsci.2022012
[1] | Obaid Algahtani, M. A. Abdelkawy, António M. Lopes . A pseudo-spectral scheme for variable order fractional stochastic Volterra integro-differential equations. AIMS Mathematics, 2022, 7(8): 15453-15470. doi: 10.3934/math.2022846 |
[2] | Yingchao Zhang, Yingzhen Lin . An ε-approximation solution of time-fractional diffusion equations based on Legendre polynomials. AIMS Mathematics, 2024, 9(6): 16773-16789. doi: 10.3934/math.2024813 |
[3] | Yingchao Zhang, Yuntao Jia, Yingzhen Lin . An ε-approximate solution of BVPs based on improved multiscale orthonormal basis. AIMS Mathematics, 2024, 9(3): 5810-5826. doi: 10.3934/math.2024282 |
[4] | Chuanhua Wu, Ziqiang Wang . The spectral collocation method for solving a fractional integro-differential equation. AIMS Mathematics, 2022, 7(6): 9577-9587. doi: 10.3934/math.2022532 |
[5] | Hui Zhu, Liangcai Mei, Yingzhen Lin . A new algorithm based on compressed Legendre polynomials for solving boundary value problems. AIMS Mathematics, 2022, 7(3): 3277-3289. doi: 10.3934/math.2022182 |
[6] | Chang Phang, Abdulnasir Isah, Yoke Teng Toh . Poly-Genocchi polynomials and its applications. AIMS Mathematics, 2021, 6(8): 8221-8238. doi: 10.3934/math.2021476 |
[7] | A.S. Hendy, R.H. De Staelen, A.A. Aldraiweesh, M.A. Zaky . High order approximation scheme for a fractional order coupled system describing the dynamics of rotating two-component Bose-Einstein condensates. AIMS Mathematics, 2023, 8(10): 22766-22788. doi: 10.3934/math.20231160 |
[8] | Shazia Sadiq, Mujeeb ur Rehman . Solution of fractional boundary value problems by ψ-shifted operational matrices. AIMS Mathematics, 2022, 7(4): 6669-6693. doi: 10.3934/math.2022372 |
[9] | Yuanqiang Chen, Jihui Zheng, Jing An . A Legendre spectral method based on a hybrid format and its error estimation for fourth-order eigenvalue problems. AIMS Mathematics, 2024, 9(3): 7570-7588. doi: 10.3934/math.2024367 |
[10] | Yones Esmaeelzade Aghdam, Hamid Mesgarani, Zeinab Asadi, Van Thinh Nguyen . Investigation and analysis of the numerical approach to solve the multi-term time-fractional advection-diffusion model. AIMS Mathematics, 2023, 8(12): 29474-29489. doi: 10.3934/math.20231509 |
The majority of stroke survivors suffer from physical and mental disabilities. This causes social and economic burdens, and it is regarded as a major source of morbidity and the second leading cause of death worldwide. This study aims to quantify the incidence of cerebrovascular stroke in the Taif region, identify risk factors for CVA, and raise awareness about modifiable risk factors.
Over 17 months period (February 2020 to June 2021), all first-stroke patients admitted to Alhada military hospital and King Faisal hospital in Taif region were included. Stroke patients from outside the Taif region were excluded from participating in the study. Age, gender, domicile, employment, history of hypertension, diabetes, cardiac diseases, smoking, previous history of stroke or transient ischemic episodes were all obtained from the patient's files. Also, a history of medications, particularly anticoagulants and contraceptive tablets if a female in childbearing age.
Overall, the study included 404 patients, 40.6% of whom were females and 59.4% of whom were males, with a mean age of 64.0 ± 14.9 years. The most common type of CVA was ischemic stroke (78.5%), followed by TIA (11.9%), and hemorrhagic stroke (7.2%). Slurred speech was the most commonly reported chief symptom among stroke survivors (23%), followed by dizziness (13.6%), left-sided weakness (10.9%), and right-sided weakness (10.9%). The incidence of stroke is increasing in patients who had chronic diseases like hypertension which is 62.6% survival had, and the second most common lead to stroke and decreased elasticity of vessels is diabetes mellitus 60.4% followed by ischemic heart disease 9.4% and smoking 5.4%.
Finally, using a prospective clinical study, the incidence of first time CVA in Taif was higher in males (about 59.4%) than in females (40.6%). That indicates a strong relation between Diabetes which represents 60.4%, Hypertension was 62.6% and age 18–55. We suggest running campaigns that target people with these risk factors to reduce the possibility of CVA occurrence.
In this paper, we propose shifted-Legendre orthogonal function method for high-dimensional heat conduction equation [1]:
{∂u∂t=k(∂2u∂x2+∂2u∂y2+∂2u∂z2),t∈[0,1],x∈[0,a],y∈[0,b],z∈[0,c],u(0,x,y,z)=ϕ(x,y,z),u(t,0,y,z)=u(t,a,y,z)=0,u(t,x,0,z)=u(t,x,b,z)=0,u(t,x,y,0)=u(t,x,y,c)=0. | (1.1) |
Where u(t,x,y,z) is the temperature field, ϕ(x,y,z) is a known function, k is the thermal diffusion efficiency, and a,b,c are constants that determine the size of the space.
Heat conduction system is a very common and important system in engineering problems, such as the heat transfer process of objects, the cooling system of electronic components and so on [1,2,3,4]. Generally, heat conduction is a complicated process, so we can't get the analytical solution of heat conduction equation. Therefore, many scholars proposed various numerical algorithms for heat conduction equation [5,6,7,8]. Reproducing kernel method is also an effective numerical algorithm for solving boundary value problems including heat conduction equation [9,10,11,12,13,14]. Galerkin schemes and Green's function are also used to construct numerical algorithms for solving one-dimensional and two-dimensional heat conduction equations [15,16,17,18,19]. Alternating direction implicit (ADI) method can be very effective in solving high-dimensional heat conduction equations [20,21]. In addition, the novel local knot method and localized space time method are also used to solve convection-diffusion problems [22,23,24,25]. These methods play an important reference role in constructing new algorithms in this paper.
Legendre orthogonal function system is an important function sequence in the field of numerical analysis. Because its general term is polynomial, Legendre orthogonal function system has many advantages in the calculation process. Scholars use Legendre orthogonal function system to construct numerical algorithm of differential equations [26,27,28].
Based on the orthogonality of Legendre polynomials, we delicately construct a numerical algorithm that can be extended to high-dimensional heat conduction equation. The proposed algorithm has α-Order convergence, and our algorithm can achieve higher accuracy compared with other algorithms.
The content of the paper is arranged like this: The properties of shifted Legendre polynomials, homogenization and spatial correlation are introduced in Section 2. In Section 3, we theoretically deduce the numerical algorithm methods of high-dimensional heat conduction equations. The convergence of the algorithm is proved in Section 4. Finally, three numerical examples and a brief summary are given at the end of this paper.
In this section, the concept of shifted-Legendre polynomials and the space to solve Eq (1.1) are introduced. These knowledge will pave the way for describing the algorithm in this paper.
The traditional Legendre polynomial is the orthogonal function system on [−1,1]. Since the variables t,x,y,z to be analyzed for Eq (1.1) defined in different intervals, it is necessary to transform the Legendre polynomial on [c1,c2], c1,c2∈R, and the shifted-Legendre polynomials after translation transformation and expansion transformation by Eq (2.1).
p0(x)=1,p1(x)=2(x−c1)c2−c1−1,pi+1(x)=2i+1i+1[2(x−c1)c2−c1−1]pi(x)−ii+1pi−1(x),i=1,2,⋯. | (2.1) |
Obviously, {pi(x)}∞i=0 is a system of orthogonal functions on L2[c1,c2], and
∫c2c1pi(x)pj(x)dx={c2−c12i+1,i=j,0,i≠j. |
Let Li(x)=√2i+1c2−c1pi(x). Based on the knowledge of ref. [29], we begin to discuss the algorithm in this paper.
Lemma 2.1. [29] {Li(x)}∞i=0 is a orthonormal basis in L2[c1,c2].
Considering that the problem studied in this paper has a nonhomogeneous boundary value condition, the problem (1.1) can be homogenized by making a transformation as follows.
v(t,x,y,z)=u(t,x,y,z)−ϕ(x,y,z). |
Here, homogenization is necessary because we can easily construct functional spaces that meet the homogenization boundary value conditions. This makes us only need to pay attention to the operator equation itself in the next research, without considering the interference caused by boundary value conditions.
In this paper, in order to avoid the disadvantages of too many symbols, the homogeneous heat conduction system is still represented by u, the thermal diffusion efficiency k=1, and the homogeneous system of heat conduction equation is simplified as follows:
{∂2u∂x2+∂2u∂y2+∂2u∂z2−∂u∂t=f(x,y,z),t∈[0,1],x∈[0,a],y∈[0,b],z∈[0,c],u(0,x,y,z)=0,u(t,0,y,z)=u(t,a,y,z)=0,u(t,x,0,z)=u(t,x,b,z)=0,u(t,x,y,0)=u(t,x,y,c)=0. | (2.2) |
The solution space of Eq (2.2) is a high-dimensional space, which can be generated by some one-dimensional spaces. Therefore, this section first defines the following one-dimensional space.
Remember AC represents the space of absolutely continuous functions.
Definition 2.1. W1[0,1]={u(t)|u∈AC,u(0)=0,u′∈L2[0,1]}, and
⟨u,v⟩W1=∫10u′v′dt,u,v∈W1. |
Let c1=0,c2=1, so {Ti(t)}∞i=0 is the orthonormal basis in L2[0,1], where Ti(t)=Li(t), note Tn(t)=n∑i=0citi. And {JTn(t)}∞n=0 is the orthonormal basis of W1[0,1], where
JTn(t)=n∑i=0citi+1i+1. |
Definition 2.2. W2[0,a]={u(x)|u′∈AC,u(0)=u(a)=0,u″∈L2[0,a]}, and
⟨u,v⟩W2=∫a0u″v″dx,u,v∈W2. |
Similarly, {Pn(x)}∞n=0 is the orthonormal basis in L2[0,a], and denote Pn(x)=n∑j=0djxj, where dj∈R.
Let
JPn(x)=n∑j=0djxj+2−aj+1x(j+1)(j+2), |
obviously, {JPn(x)}∞n=0 is the orthonormal basis of W2[0,a].
We start with solving one-dimensional heat conduction equation, and then extend the algorithm to high-dimensional heat conduction equations.
{∂2u∂x2−∂u∂t=f(x),t∈[0,1],x∈[0,a],u(0,x)=0,u(t,0)=u(t,a)=0. | (3.1) |
Let D=[0,1]×[0,a], CC represents the space of completely continuous functions, and Nn represents a set of natural numbers not exceeding n.
Definition 3.1. W(D)={u(t,x)|∂u∂x∈CC,(t,x)∈D,u(0,x)=0,u(t,0)=u(t,a)=0,∂3u∂t∂x2∈L2(D)}, and
⟨u,v⟩W(D)=∬D∂3u∂t∂x2∂3v∂t∂x2dσ. |
Theorem 3.1. W(D) is an inner product space.
Proof. ∀u(t,x)∈W(D), if ⟨u,u⟩W(D)=0, means
∬D[∂3u(t,x)∂t∂x2]2dσ=0, |
and it implies
∂3u(t,x)∂t∂x2=∂∂t(∂2u(t,x)∂x2)=0. |
Combined with the conditions of W(D), we can get u=0.
Obviously, W(D) satisfies other conditions of inner product space.
Theorem 3.2. ∀u∈W(D),v1(t)v2(x)∈W(D), then
⟨u(t,x),v1(t)v2(x)⟩W(D)=⟨⟨u(t,x),v1(t)⟩W1,v2(x)⟩W2. |
Proof.⟨u(t,x),v1(t)v2(x)⟩W(D)=∬D∂3u(t,x)∂t∂x2∂3[v1(t)v2(x)]∂t∂x2dσ=∬D∂2∂x2[∂u(t,x)∂t]∂v1(t)∂t∂2v2(x)∂x2dσ=∫a0∂2∂x2⟨u(t,x),v1(t)⟩W1∂2v2(x)∂x2dx=⟨⟨u(t,x),v1(t)⟩W1,v2(x)⟩W2. |
Corollary 3.1. ∀u1(t)u2(x)∈W(D),v1(t)v2(x)∈W(D), then
⟨u1(t)u2(x),v1(t)v2(x)⟩W(D)=⟨u1(t),v1(t)⟩W1⟨u2(x),v2(x)⟩W2. |
Let
ρij(t,x)=JTi(t)JPj(x),i,j∈N. |
Theorem 3.3. {ρij(t,x)}∞i,j=0is an orthonormal basis inW(D).
Proof. ∀ρij(t,x),ρlm(t,x)∈W(D),i,j,l,m∈N,
⟨ρij(t,x),ρlm(t,x)⟩W(D)=⟨JTi(t)JPj(x),JTl(t)JPm(x)⟩W(D)=⟨JTi(t),JTl(t)⟩W1⟨JPj(x),JPm(x)⟩W2. |
So
⟨ρij(t,x),ρlm(t,x)⟩W(D)={1,i=l,j=m,0,others. |
In addition, ∀u∈W(D), if ⟨u,ρij⟩W(D)=0, means
⟨u(t,x),JTi(t)JPj(x)⟩W(D)=⟨⟨u(t,x),JTi(t)⟩W1,JPj(x)⟩W2=0. |
Note that {JPj(x)}∞j=0 is the complete system of W2, so ⟨u(t,x),JTi(t)⟩W1=0.
Similarly, we can get u(t,x)=0.
Let L:W(D)→L2(D),
Lu=∂2u∂x2−∂u∂t. |
So, Eq (3.1) can be simplified as
Lu=f. | (3.2) |
Definition 3.2. ∀ε>0, if u∈W(D) and
||Lu−f||2L(D)<ε, | (3.3) |
then u is called the ε−best approximate solution for Lu=f.
Theorem 3.4. Any ε>0, there is N∈N, when n>N, then
un(t,x)=n∑i=0n∑j=0η∗ijρij(t,x) | (3.4) |
is the ε−best approximate solution for Lu=f, where η∗ij satisfies
||n∑i=0n∑j=0η∗ijLρij−f||2L2(D)=mindij||n∑i=0n∑j=0dijLρij−f||2L2(D),dij∈R,i,j∈Nn. |
Proof. According to the Theorem 3.3, if u satisfies Eq (3.2), then u(t,x)=∞∑i=0∞∑j=0ηijρij(t,x), where ηij is the Fourier coefficient of u.
Note that L is a bounded operator [30], hence, any ε>0, there is N∈N, when n>N, then
||∞∑i=n+1∞∑j=n+1ηijρij||2W(D)<ε||L||2. |
So,
||n∑i=0n∑j=0η∗ijLρij−f||2L2(D)=mindij||n∑i=0n∑j=0dijLρij−f||2L2(D)≤||n∑i=0n∑j=0ηijLρij−f||2L2(D)=||n∑i=0n∑j=0ηijLρij−Lu||2L2(D)=||∞∑i=n+1∞∑j=n+1ηijLρij||2L2(D)≤||L||2||∞∑i=n+1∞∑j=n+1ηijρij||2W(D)< ε. |
For obtain un(t,x), we need to find the coefficients η∗ij by solving Eq (3.5).
min{ηij}ni,j=0J=‖Lun−f‖2L2(D) | (3.5) |
In addition,
J=‖Lun−f‖2L2(D)=⟨Lun−f,Lun−f⟩L2(D)=⟨Lun,Lun⟩L2(D)−2⟨Lun,f⟩L2(D)+⟨f,f⟩L2(D)=n∑i=0n∑j=0n∑l=0n∑m=0ηijηlm⟨Lρij,Lρlm⟩L2(D)−2n∑i=0n∑j=0ηij⟨Lρij,f⟩L2(D)+⟨f,f⟩L2(D). |
So,
∂J∂ηij=2n∑l=0n∑m=0ηlm⟨Lρij,Lρlm⟩L2(D)−2ηij⟨Lρij,f⟩L2(D),i,j∈Nn |
and the equations ∂J∂ηij=0,i,j∈Nn can be simplified to
Aη=B, | (3.6) |
where
A=(⟨Lρij,Lρlm⟩L2(D))N×N,N=(n+1)2,η=(ηij)N×1,B=(⟨Lρij,f⟩L2(D))N×1. |
Theorem 3.5. Aη=B has a unique solution.
Proof. It can be proved that A is nonsingular. Let η satisfy Aη=0, that is,
n∑i=0n∑j=0⟨Lρij,Lρlm⟩L2(D)ηij=0,l,m∈Nn. |
So, we can get the following equations:
n∑i=0n∑j=0⟨ηijLρij,ηlmLρlm⟩L2(D)=0,l,m∈Nn. |
By adding the above (n+1)2 equations, we can get
⟨n∑i=0n∑j=0ηijLρij,n∑l=0n∑m=0ηlmLρlm⟩L2(D)=‖n∑i=0n∑j=0ηijLρij‖2L2(D)=0. |
So,
n∑i=0n∑j=0ηijLρij=0. |
Note that L is reversible. Therefore, ηij=0,i,j∈Nn.
According to Theorem 3.5, un(t,x) can be obtained by substituting η=A−1B into un=n∑i=0n∑j=0ηijρij(t,x).
{∂2u∂x2+∂2u∂y2−∂u∂t=f(x,y),t∈[0,1],x∈[0,a],y∈[0,b],u(0,x,y)=0,u(t,0,y)=u(t,a,y)=0,u(t,x,0)=u(t,x,b)=0. | (3.7) |
Similar to definition 2.2, we can give the definition of linear space W3[0,b] as follows:
W3[0,b]={u(y)|u′∈AC,y∈[0,b],u(0)=u(b)=0,u″∈L2[0,b]}. |
Similarly, let {Qn(y)}∞n=0 is the orthonormal basis in L2[0,b], and denote Qn(y)=n∑k=0qkyk.
Let
JQn(y)=n∑k=0qkyk+2−bk+1y(k+1)(k+2), |
it is easy to prove that {JQn(y)}∞n=0 is the orthonormal basis of W3[0,b].
Let Ω=[0,1]×[0,a]×[0,b]. Now we define a three-dimensional space.
Definition 3.3 W(Ω)={u(t,x,y)|∂2u∂x∂y∈CC,(t,x,y)∈Ω,u(0,x,y)=0, u(t,0,y)=u(t,a,y)=0,u(t,x,0)=u(t,x,b)=0,∂5u∂t∂x2∂y2∈L2(Ω)}, and
⟨u,v⟩W(Ω)=∭Ω∂5u∂t∂x2∂y2∂5v∂t∂x2∂y2dΩ,u,v∈W(Ω). |
Similarly, we give the following theorem without proof.
Theorem 3.6. {ρijk(t,x,y)}∞i,j,k=0is an orthonormal basis ofW(Ω), where
ρijk(t,x,y)=JTi(t)JPj(x)JQk(y),i,j,k∈Nn. |
Therefore, we can get un as
un(t,x,y)=n∑i=0n∑j=0n∑k=0ηijkρijk(t,x,y), | (3.8) |
according to the theory in Section 3.1, we can find all ηijk,i,j,k∈Nn.
{∂2u∂x2+∂2u∂y2+∂2u∂z2−∂u∂t=f(x,y,z),t∈[0,1],x∈[0,a],y∈[0,b],z∈[0,c],u(0,x,y,z)=0,u(t,0,y,z)=u(t,a,y,z)=0,u(t,x,0,z)=u(t,x,b,z)=0,u(t,x,y,0)=u(t,x,y,c)=0. | (3.9) |
By Lemma 2.1, note that the orthonormal basis of L2[0,c] is {Rn(z)}∞n=0, and denote Rn(z)=n∑m=0rmzm, where rm is the coefficient of polynomial Rn(z).
We can further obtain the orthonormal basis JRn(z)=n∑m=0rmzm+2−cm+1z(m+1)(m+2) of W4[0,c], where
JRn(z)=n∑m=0rmzm+2−cm+1z(m+1)(m+2), |
and
W4[0,c]={u(z)|u′∈AC,z∈[0,c],u(0)=u(c)=0,u″∈L2[0,c]}. |
Let G=[0,1]×[0,a]×[0,b]×[0,c]. Now we define a four-dimensional space.
Definition 3.4. W(G)={u(t,x,y,z)|∂3u∂x∂y∂z∈CC,(t,x,y,z)∈G,u(0,x,y,z)=0,u(t,0,y,z)=u(t,a,y,z)=0, u(t,x,0,z)=u(t,x,b,z)=0,u(t,x,y,0)=u(t,x,y,c)=0,∂7u∂t∂x2∂y2∂z2∈L2(G)}, and
⟨u,v⟩W(G)=⨌G∂7u∂t∂x2∂y2∂z2∂7v∂t∂x2∂y2∂z2dG,u,v∈W(G), |
where dG = dtdxdydz.
Similarly, we give the following theorem without proof.
Theorem 3.7. {ρijk(t,x,y,z)}∞i,j,k,m=0is an orthonormal basis ofW(G), where
ρijkm(t,x,y,z)=JTi(t)JPj(x)JQk(y)JRm(z),i,j,k,m∈N. |
Therefore, we can get un as
un(t,x,y,z)=n∑i=0n∑j=0n∑k=0n∑m=0ηijkmρijkm(t,x,y,z), | (3.10) |
according to the theory in Section 3.1, we can find all ηijkm,i,j,k,m∈Nn.
Suppose u(t,x)=∞∑i=0∞∑j=0ηijρij(t,x) is the exact solution of Eq (3.5). Let PN1,N2u(t,x)=N1∑i=0N2∑j=0ηijTi(t)Pj(x) is the projection of u in L(D).
Theorem 4.1. Suppose ∂r+lu(t,x)∂tr∂xl∈L2(D), and N1>r,N2>l, then, the error estimate of PN1,N2u(t,x) is
||u−PN1,N2u||2L2(D)≤CN−α, |
where C is a constant, N=min{N1,N2},α=min{r,l}.
Proof. According to the lemma in ref. [29], it follows that
||u−uN1||2L2t[0,1]=||u−Pt,N1u||2L2t[0,1]≤C1N−r1||∂r∂tru(t,x)||2L2t[0,1], |
where uN1=Pt,N1u represents the projection of u on variable t in L2[0,1], and ||⋅||L2t[0,1] represents the norm of (⋅) with respect to variable t in L2[0,1].
By integrating both sides of the above formula with respect to x, we can get
||u−uN1||2L2(D)≤C1N−r1∫a0||∂r∂tru||2L2t[0,1]dx=C1N−r1||∂r∂tru||2L2(D). |
Moreover,
u(t,x)−uN1(t,x)=∞∑i=N1+1⟨u,Ti⟩L2t[0,1]Ti(t)=∞∑i=N1+1∞∑j=0⟨⟨u,Ti⟩L2t[0,1],Pj⟩L2x[0,a]Pj(x)Ti(t). |
According to the knowledge in Section 3,
||u−uN1||2L2(D)=∞∑i=N1+1∞∑j=0c2ij, |
where cij=⟨⟨u,Ti⟩L2t[0,1],Pj⟩L2x[0,a].
Therefore,
∞∑i=N1+1∞∑j=0c2ij≤C1N−r1||∂r∂tru||2L2(D). |
Similarly,
∞∑i=0∞∑j=N2+1c2ij≤C2N−l2||∂l∂xlu||2L2(D). |
In conclusion,
||u−PN1,N2u||2L2(D)=||(∞∑i=0∞∑j=0−N1∑i=0N2∑j=0)c2ijTi(t)Pj(x)||2L2(D)≤∞∑i=N1+1N2∑j=0c2ij+∞∑i=0∞∑j=N2+1c2ij≤∞∑i=N1+1∞∑j=0c2ij+∞∑i=0∞∑j=N2+1c2ij≤C1N−r1||∂r∂tru||2L2(D)+C2N−l2||∂l∂xlu||2L2(D)≤CN−α. |
Theorem 4.2. Suppose ∂r+lu(t,x)∂tr∂xl∈L2(D), un(t,x) is the ε−best approximate solution of Eq (3.2), and n>max{r,l}, then,
||u−un||2W(D)≤Cn−α. |
where C is a constant, α=min{r,l}.
Proof. According to Theorem 3.4 and Theorem 4.1, the following formula holds.
||u−un||2W(D)≤||u−PN1,N2u||2L2(D)≤Cn−α. |
So, the ε−approximate solution has α convergence order, and the convergence rate is related to n, where represents the number of bases, and the convergence order can calculate as follows.
C.R.=logn2n1max|en1|max|en2|. | (4.1) |
Where ni,i=1,2 represents the number of orthonormal base elements.
Here, three examples are compared with other algorithms. N represents the number of orthonormal base elements. For example, N=10×10, which means that we use the orthonormal system {ρij}10i,j=0 of W(D) for approximate calculation, that is, we take the orthonormal system {JTi(t)}10i=0 and {JPj(x)}10j=0 to construct the ε−best approximate solution.
Example 5.1. Consider the following one-demensional heat conduction system [7,20]
{ut=uxx,(t,x)∈[0,1]×[0,2π],u(0,x)=sin(x),u(t,0)=u(t,2π)=0. |
The exact solution of Ex. 5.1 is e−tsinx.
In Table 1, C.R. is calculated according to Eq (4.2). The errors in Tables 1 and 2 show that the proposed algorithm is very effective. In Figures 1 and 2, the blue surface represents the surface of the real solution, and the yellow surface represents the surface of un. With the increase of N, the errors between the two surfaces will be smaller.
N | HOC-ADI Method [20] | FVM [7] | Present method | C.R. |
4×4 | 6.12E-3 | 4.92E-2 | 9.892E-3 | – |
6×6 | 1.68E-3 | 2.05E-2 | 4.319E-4 | 3.8613 |
8×8 | 7.69E-4 | 1.27E-2 | 9.758E-6 | 6.5873 |
10×10 | 4.40E-4 | 9.20E-3 | 1.577E-7 | 9.2432 |
|u−un| | t=0.1 | t=0.3 | t=0.5 | t=0.7 | t=0.9 |
x=π5 | 1.195E-8 | 3.269E-8 | 5.009E-8 | 6.473E-8 | 8.127E-8 |
x=3π5 | 2.583E-8 | 7.130E-8 | 1.088E-7 | 1.390E-7 | 1.577E-7 |
x=7π5 | 2.583E-8 | 7.130E-8 | 1.088E-7 | 1.390E-7 | 1.577E-7 |
x=9π5 | 1.195E-8 | 3.269E-8 | 5.009E-8 | 6.473E-8 | 8.127E-8 |
Example 5.2. Consider the following two-demensional heat conduction system [20,21]
{ut=uxx+uyy,(t,x,y)∈[0,1]×[0,1]×[0,1],u(0,x,y)=sin(πx)sin(πy),u(t,0,y)=u(t,1,y)=u(t,x,0)=u(t,x,1)=0. |
The exact solution of Ex. 5.2 is u=e−2π2tsin(πx)sin(πy).
Example 5.2 is a two-dimensional heat conduction equation. Table 3 shows the errors comparison with other algorithms. Table 4 lists the errors variation law in the x−axis direction. Figures 3 and 4 show the convergence effect of the scheme more vividly.
N | CCD-ADI Method [21] | RHOC-ADI Method [20] | Present method | C.R. |
4×4×4 | 8.820E-3 | 3.225E-2 | 5.986E-3 | – |
8×8×8 | 6.787E-5 | 1.969E-3 | 3.126E-5 | 2.52704 |
|u−un| | y=0.1 | y=0.3 | y=0.5 | y=0.7 | y=0.9 |
x=0.1 | 7.414E-6 | 1.963E-5 | 2.421E-5 | 1.963E-5 | 7.414E-6 |
x=0.3 | 1.963E-5 | 5.130E-5 | 6.347E-5 | 5.130E-5 | 1.963E-5 |
x=0.5 | 2.421E-5 | 6.347E-5 | 7.839E-5 | 6.347E-5 | 2.421E-5 |
x=0.7 | 1.963E-5 | 5.130E-5 | 6.347E-5 | 5.130E-5 | 1.963E-5 |
x=0.9 | 7.414E-6 | 1.963E-5 | 2.421E-5 | 1.963E-5 | 7.414E-6 |
Example 5.3. Consider the three-demensional problem as following:
{(1a2+1b2+1c2)ut=uxx+uyy+uzz,(t,x,y,z)∈[0,1]×[0,a]×[0,b]×[0,c],u(0,x,y)=sin(πxa)sin(πyb)sin(πzc),u(t,0,y)=u(t,1,y)=u(t,x,0)=u(t,x,1)=0. |
The exact solution of Ex. 5.3 is u=e−π2tsin(πxa)sin(πyb)sin(πzc).
Example 5.3 is a three-dimensional heat conduction equation, this kind of heat conduction system is also the most common case in the industrial field. Table 5 lists the approximation degree between the ε−best approximate solution and the real solution when the boundary time t=1.
|u−un| | y=0.2 | y=0.6 | y=1.0 | y=1.4 | y=1.8 |
x=0.1 | 1.130E-3 | 2.873E-3 | 3.451E-3 | 2.873E-3 | 1.130E-3 |
x=0.3 | 2.893E-3 | 7.350E-3 | 8.820E-3 | 7.350E-3 | 2.893E-3 |
x=0.5 | 3.482E-3 | 8.838E-3 | 1.059E-2 | 8.838E-3 | 3.482E-3 |
x=0.7 | 2.893E-3 | 7.350E-3 | 8.820E-3 | 7.735E-3 | 2.893E-3 |
x=0.9 | 1.130E-3 | 2.873E-3 | 3.451E-3 | 2.873E-3 | 1.130E-3 |
The Shifted-Legendre orthonormal scheme is applied to high-dimensional heat conduction equations. The algorithm proposed in this paper has some advantages. On the one hand, the algorithm is evolved from the algorithm for solving one-dimensional heat conduction equation, which is easy to be understood and expanded. On the other hand, the standard orthogonal basis proposed in this paper is a polynomial structure, which has the characteristics of convergence order.
This work has been supported by three research projects (2019KTSCX217, 2020WQNCX097, ZH22017003200026PWC).
The authors declare no conflict of interest.
[1] |
Murray CJ, Vos T, Lozano R, et al. (2013) Disability-adjusted life years (DALYs) for 291 diseases and injuries in 21 regions, 1990–2010: a systematic analysis for the global burden of disease study 2010. Lancet 380: 2197-2223. https://doi.org/10.1016/S0140-6736(12)61689-4 ![]() |
[2] |
Ovbiagele B, Nguyen-Huynh MN (2011) Stroke epidemiology: advancing our understanding of disease mechanism and therapy. Neurotherapeutics 8: 319-329. https://doi.org/10.1007/s13311-011-0053-1 ![]() |
[3] |
Thrift AG, Thayabaranathan T, Howard G, et al. (2017) Global stroke statistics. Int J Stroke 12: 13-32. https://doi.org/10.1177/1747493016676285 ![]() |
[4] |
Benjamin EJ, Blaha MJ, Chiuve SE, et al. (2017) Heart disease and stroke statistics—2017 update: a report from the American Heart Association. Circulation 135: e146-e603. https://doi.org/10.1161/CIR.0000000000000485 ![]() |
[5] | Ayoola AE, Banzal SS, Elamin AK, et al. (2003) Profile of stroke in Gazan, kingdom of Saudi Arabia. Neurosciences (Riyadh) 8: 229-232. |
[6] |
Robert AA, Zamzami MM (2014) Stroke in Saudi Arabia: a review of the recent literature. Pan Afr Med J 17: 14. https://doi.org/10.11604/pamj.2014.17.14.3015 ![]() |
[7] |
Al Rajeh S, Awada A, Niazi G, et al. (1993) Stroke in a Saudi Arabian National Guard community. Analysis of 500 consecutive cases from a population-based hospital. Stroke 24: 1635-1639. https://doi.org/10.1161/01.STR.24.11.1635 ![]() |
[8] |
Alhazzani AA, Mahfouz AA, Abolyazid AY, et al. (2018) Study of stroke incidence in the Aseer region, southwestern Saudi Arabia. Int J Environ Res Public Health 15: 215. https://doi.org/10.3390/ijerph15020215 ![]() |
[9] | Alahmari K, Paul SS (2016) Prevalence of stroke in Kingdom of Saudi Arabia—Through a physiotherapist diary. Mediterr J Soc Sci 7: 228-233. https://doi.org/10.5901/mjss.2016.v7n1s1p228 |
[10] |
Béjot Y, Delpont B, Giroud M (2016) Rising stroke incidence in young adults: more epidemiological evidence, more questions to be answered. J Am Heart Assoc 5: e003661. https://doi.org/10.1161/JAHA.116.003661 ![]() |
[11] | Saudi Arabia General Authority for Statistics, Population characteristics surveys, 2020. Available from: https://www.stats.gov.sa/en/43 |
[12] | World Population Review, Taif Population 2022. Available from: https://worldpopulationreview.com/world-cities/taif-population |
[13] | Al-Subaie AS, Al-Habeeb A, Altwaijri YA (2020) Overview of the Saudi national mental health survey. Int J Methods Psychiatr Res 29: e1835. https://doi.org/10.1002/mpr.1835 |
[14] | World Health Organization, Saudi Arabia Country Statistics, 2014. Available from: http://www.who.int/countries/sau/en/ |
[15] |
Mozaffarian D, Benjamin EJ, Go AS, et al. (2015) Heart disease and stroke statistics—2015 update: a report from the American Heart Association. Circulation 131: e29-e322. https://doi.org/10.1161/CIR.0000000000000152 ![]() |
[16] |
Roger VL, Go AS, Lloyd-Jones DM, et al. (2012) Executive summary: heart disease and stroke statistics—2012 update: a report from the American Heart Association. Circulation 125: 188-197. https://doi.org/10.1161/CIR.0b013e3182456d46 ![]() |
[17] |
Anderlini D, Wallis G, Marinovic W (2020) Incidence of hospitalization for stroke in Queensland, Australia: younger adults at risk. J Stroke Cerebrovasc Dis 29: 104797. https://doi.org/10.1016/j.jstrokecerebrovasdis.2020.104797 ![]() |
[18] |
George MG, Tong X, Kuklina EV, et al. (2011) Trends in stroke hospitalizations and associated risk factors among children and young adults, 1995–2008. Ann Neurol 70: 713-721. https://doi.org/10.1002/ana.22539 ![]() |
[19] |
O'Donnell MJ, Xavier D, Liu L, et al. (2010) Risk factors for ischaemic and intracerebral haemorrhagic stroke in 22 countries (the interstroke study): a case-control study. Lancet 376: 112-123. https://doi.org/10.1016/S0140-6736(10)60834-3 ![]() |
[20] |
Yousufuddin M, Bartley AC, Alsawas M, et al. (2017) Impact of multiple chronic conditions in patients hospitalized with stroke and transient ischemic attack. J Stroke Cerebrovasc Dis 26: 1239-1248. https://doi.org/10.1016/j.jstrokecerebrovasdis.2017.01.015 ![]() |
[21] |
van Asch CJ, Luitse MJ, Rinkel GJ, et al. (2010) Incidence, case fatality, and functional outcome of intracerebral haemorrhage over time, according to age, sex, and ethnic origin: a systematic review and meta-analysis. Lancet Neurol 9: 167-176. https://doi.org/10.1016/S1474-4422(09)70340-0 ![]() |
[22] |
Kapral MK, Fang J, Hill MD, et al. (2005) Sex differences in stroke care and outcomes: results from the registry of the Canadian Stroke Network. Stroke 36: 809-814. https://doi.org/10.1161/01.STR.0000157662.09551.e5 ![]() |
[23] |
Moon JR, Capistrant BD, Kawachi I, et al. (2012) Stroke incidence in older US hispanics: is foreign birth protective?. Stroke 43: 1224-1229. https://doi.org/10.1161/STROKEAHA.111.643700 ![]() |
[24] |
Stansbury JP, Jia H, Williams LS, et al. (2005) Ethnic disparities in stroke: epidemiology, acute care, and postacute outcomes. Stroke 36: 374-386. https://doi.org/10.1161/01.STR.0000153065.39325.fd ![]() |
[25] |
Banerjee C, Moon YP, Paik MC, et al. (2012) Duration of diabetes and risk of ischemic stroke: the Northern Manhattan Study. Stroke 43: 1212-1217. https://doi.org/10.1161/STROKEAHA.111.641381 ![]() |
[26] |
Sui X, Lavie CJ, Hooker SP, et al. (2011) A prospective study of fasting plasma glucose and risk of stroke in asymptomatic men. Mayo Clin Proc 86: 1042-1049. https://doi.org/10.4065/mcp.2011.0267 ![]() |
[27] |
Utsumi H, Elkind MM (1986) Potentially lethal damage, deficient repair in X-ray-sensitive caffeine-responsive Chinese hamster cells. Radiat Res 107: 95-106. https://doi.org/10.2307/3576853 ![]() |
[28] |
Amarenco P, Labreuche J (2009) Lipid management in the prevention of stroke: review and updated meta-analysis of statins for stroke prevention. Lancet Neurol 8: 453-463. https://doi.org/10.1016/S1474-4422(09)70058-4 ![]() |
[29] | Heart Protection Study Collaborative Group.MRC/BHF Heart Protection Study of cholesterol lowering with simvastatin in 20,536 high-risk individuals: a randomised placebo-controlled trial. Lancet (2002) 360: 7-22. https://doi.org/10.1016/S0140-6736(02)09327-3 |
[30] |
Horenstein RB, Smith DE, Mosca L (2002) Cholesterol predicts stroke mortality in the women's pooling project. Stroke 33: 1863-1868. https://doi.org/10.1161/01.STR.0000020093.67593.0B ![]() |
[31] |
Kurth T, Everett BM, Buring JE, et al. (2007) Lipid levels and the risk of ischemic stroke in women. Neurology 68: 556-562. https://doi.org/10.1212/01.wnl.0000254472.41810.0d ![]() |
[32] |
Nagata C, Takatsuka N, Shimizu N, et al. (2004) Sodium intake and risk of death from stroke in japanese men and women. Stroke 35: 1543-1547. https://doi.org/10.1161/01.STR.0000130425.50441.b0 ![]() |
[33] |
Ascherio A, Rimm EB, Hernan MA, et al. (1998) Intake of potassium, magnesium, calcium, and fiber and risk of stroke among US men. Circulation 98: 1198-1204. https://doi.org/10.1161/01.CIR.98.12.1198 ![]() |
[34] |
Gill JS, Zezulka AV, Shipley MJ, et al. (1986) Stroke and alcohol consumption. N Engl J Med 315: 1041-1046. https://doi.org/10.1056/NEJM198610233151701 ![]() |
[35] |
Foerster M, Marques-Vidal P, Gmel G, et al. (2009) Alcohol drinking and cardiovascular risk in a population with high mean alcohol consumption. Am J Cardiol 103: 361-368. https://doi.org/10.1016/j.amjcard.2008.09.089 ![]() |
[36] | Maulaz AB, Bezerra DC, Bogousslavsky J (2005) Posterior cerebral artery infarction from middle cerebral artery infarction. Arch Neurol 62: 938-941. https://doi.org/10.1001/archneur.62.6.938 |
[37] | Rymer MM (2011) Hemorrhagic stroke: intracerebral hemorrhage. Mo Med 108: 50-54. |
1. | Yahong Wang, Wenmin Wang, Cheng Yu, Hongbo Sun, Ruimin Zhang, Approximating Partial Differential Equations with Physics-Informed Legendre Multiwavelets CNN, 2024, 8, 2504-3110, 91, 10.3390/fractalfract8020091 | |
2. | Shiyv Wang, Xueqin Lv, Songyan He, The reproducing kernel method for nonlinear fourth-order BVPs, 2023, 8, 2473-6988, 25371, 10.3934/math.20231294 | |
3. | Yingchao Zhang, Yuntao Jia, Yingzhen Lin, A new multiscale algorithm for solving the heat conduction equation, 2023, 77, 11100168, 283, 10.1016/j.aej.2023.06.066 | |
4. | Safia Malik, Syeda Tehmina Ejaz, Shahram Rezapour, Mustafa Inc, Ghulam Mustafa, Innovative numerical method for solving heat conduction using subdivision collocation, 2025, 1598-5865, 10.1007/s12190-025-02429-9 |
|u−un| | t=0.1 | t=0.3 | t=0.5 | t=0.7 | t=0.9 |
x=π5 | 1.195E-8 | 3.269E-8 | 5.009E-8 | 6.473E-8 | 8.127E-8 |
x=3π5 | 2.583E-8 | 7.130E-8 | 1.088E-7 | 1.390E-7 | 1.577E-7 |
x=7π5 | 2.583E-8 | 7.130E-8 | 1.088E-7 | 1.390E-7 | 1.577E-7 |
x=9π5 | 1.195E-8 | 3.269E-8 | 5.009E-8 | 6.473E-8 | 8.127E-8 |
|u−un| | y=0.1 | y=0.3 | y=0.5 | y=0.7 | y=0.9 |
x=0.1 | 7.414E-6 | 1.963E-5 | 2.421E-5 | 1.963E-5 | 7.414E-6 |
x=0.3 | 1.963E-5 | 5.130E-5 | 6.347E-5 | 5.130E-5 | 1.963E-5 |
x=0.5 | 2.421E-5 | 6.347E-5 | 7.839E-5 | 6.347E-5 | 2.421E-5 |
x=0.7 | 1.963E-5 | 5.130E-5 | 6.347E-5 | 5.130E-5 | 1.963E-5 |
x=0.9 | 7.414E-6 | 1.963E-5 | 2.421E-5 | 1.963E-5 | 7.414E-6 |
|u−un| | y=0.2 | y=0.6 | y=1.0 | y=1.4 | y=1.8 |
x=0.1 | 1.130E-3 | 2.873E-3 | 3.451E-3 | 2.873E-3 | 1.130E-3 |
x=0.3 | 2.893E-3 | 7.350E-3 | 8.820E-3 | 7.350E-3 | 2.893E-3 |
x=0.5 | 3.482E-3 | 8.838E-3 | 1.059E-2 | 8.838E-3 | 3.482E-3 |
x=0.7 | 2.893E-3 | 7.350E-3 | 8.820E-3 | 7.735E-3 | 2.893E-3 |
x=0.9 | 1.130E-3 | 2.873E-3 | 3.451E-3 | 2.873E-3 | 1.130E-3 |
N | HOC-ADI Method [20] | FVM [7] | Present method | C.R. |
4×4 | 6.12E-3 | 4.92E-2 | 9.892E-3 | – |
6×6 | 1.68E-3 | 2.05E-2 | 4.319E-4 | 3.8613 |
8×8 | 7.69E-4 | 1.27E-2 | 9.758E-6 | 6.5873 |
10×10 | 4.40E-4 | 9.20E-3 | 1.577E-7 | 9.2432 |
|u−un| | t=0.1 | t=0.3 | t=0.5 | t=0.7 | t=0.9 |
x=π5 | 1.195E-8 | 3.269E-8 | 5.009E-8 | 6.473E-8 | 8.127E-8 |
x=3π5 | 2.583E-8 | 7.130E-8 | 1.088E-7 | 1.390E-7 | 1.577E-7 |
x=7π5 | 2.583E-8 | 7.130E-8 | 1.088E-7 | 1.390E-7 | 1.577E-7 |
x=9π5 | 1.195E-8 | 3.269E-8 | 5.009E-8 | 6.473E-8 | 8.127E-8 |
N | CCD-ADI Method [21] | RHOC-ADI Method [20] | Present method | C.R. |
4×4×4 | 8.820E-3 | 3.225E-2 | 5.986E-3 | – |
8×8×8 | 6.787E-5 | 1.969E-3 | 3.126E-5 | 2.52704 |
|u−un| | y=0.1 | y=0.3 | y=0.5 | y=0.7 | y=0.9 |
x=0.1 | 7.414E-6 | 1.963E-5 | 2.421E-5 | 1.963E-5 | 7.414E-6 |
x=0.3 | 1.963E-5 | 5.130E-5 | 6.347E-5 | 5.130E-5 | 1.963E-5 |
x=0.5 | 2.421E-5 | 6.347E-5 | 7.839E-5 | 6.347E-5 | 2.421E-5 |
x=0.7 | 1.963E-5 | 5.130E-5 | 6.347E-5 | 5.130E-5 | 1.963E-5 |
x=0.9 | 7.414E-6 | 1.963E-5 | 2.421E-5 | 1.963E-5 | 7.414E-6 |
|u−un| | y=0.2 | y=0.6 | y=1.0 | y=1.4 | y=1.8 |
x=0.1 | 1.130E-3 | 2.873E-3 | 3.451E-3 | 2.873E-3 | 1.130E-3 |
x=0.3 | 2.893E-3 | 7.350E-3 | 8.820E-3 | 7.350E-3 | 2.893E-3 |
x=0.5 | 3.482E-3 | 8.838E-3 | 1.059E-2 | 8.838E-3 | 3.482E-3 |
x=0.7 | 2.893E-3 | 7.350E-3 | 8.820E-3 | 7.735E-3 | 2.893E-3 |
x=0.9 | 1.130E-3 | 2.873E-3 | 3.451E-3 | 2.873E-3 | 1.130E-3 |